US And Israel Quietly Provide Military Support And Parts To Iran, Which In Turn Is Arming Syria

Before the Ukraine, there was Syria. Before Syria, there was Iran. For over 30 years, Iran was the perpetual strawman of every attempt to escalate hostilities in the middle east. One only needs to recall that the original “red line” was not Obama’s but that of Israel’s PM Netanyahu referring to Iran’s nuclear program (which most likely was under the control of Stuxnet, and thus the NSA, more than it was Iran’s to begin with).

What is surprising in recent months, is how quickly in the aftermath of the Syrian failed escalation script from last summer, Iran quickly dropped off the axis of America’s worst enemies, and from the biggest bogeyman, has rapidly become a nation with which the US is eager to resume diplomatic and trade relations. Sure, Israel pretended to be angry about Iran’s ascent in the ranks of US foreign allies-to-be, and issued a few angry press releases, but that’s all it was – posturing, fit only for the front page of tabloids. It is what was happening behind the scenes that is noteworthy.

And what is happening behind the scenes is the same thing that happens every time the US (or Israel, or any other western nations) finds a surprising new ally: said ally proceeds to purchase military equipment from the US (or other western nations), using loans from the US (or other western nation banks).

Enter bizarre twist #1 – US companies selling military parts to none other than the formerly country non grata (at least until mid-2013): Iran. Reuters reports:

U.S. aerospace companies are seeking permission to sell airliner parts to Iran for the first time in three decades, in a key test of the temporary relief on sanctions given under talks to curtail Iran’s nuclear activities.

 

At least two leading manufacturers, Boeing and engine maker General Electric, have applied for export licenses in a six-month window agreed by Iran and six world powers in November, industry officials and other sources familiar with the matter said.

 

If approved, the sales would be the first acknowledged dealings between U.S. aerospace companies and Iran since the 1979 U.S. hostage crisis led to sanctions that were later broadened during the dispute over Iran’s nuclear activities.

 

A source familiar with the matter said that Boeing, the world’s biggest manufacturer of passenger jets, had also filed a request for permission to export parts to Iran.

 

Boeing declined to comment, referring questions to the U.S. State Department, which in turn referred queries to the U.S. Treasury. A spokeswoman for the Treasury Department, which enforces international sanctions, declined to comment on specific license requests or applications.

Enter bizarre twist # 2 – “GE is doing it for the kids.”

A GE spokesman said his company had been asking since 2004 for permission to provide parts and maintenance for engines for safety reasons, without profiting from the scheme. GE, the world’s largest maker of jet engines by sales, refiled its request after the sanctions relief came into force, he added.

 

“We don’t want to make a penny on it. It’s entirely for flight safety,” Rick Kennedy said, adding that GE would donate any proceeds to charity.

But of course, because when one thinks suing the US to get tax refunds corporate generosity (if not bailouts), one thinks GE.

Enter bizarre twist # 3 – it is not only the US that is seeking to promptly capitalize on this “temporary” elimination of Iran sanctions. It is Iran’s perpetual nemesis, Israel, that is not only planning to supply weapons to Iran, but is already doing so. However, unlike the US which at least has clumsily stumbled upon a detente whose only purpose is logically to get Iran to buy Made in America weapons, with Israel the hypocrisy takes on a whole new meaning. Quote the Telegraph:

Benjamin Netanyahu, the Israeli prime minister, called for increased pressure on Iran to force it to abandon a programme that Israel regards as a front for building an atomic bomb and a threat to its existence.

 

Visiting the Golan Heights on Tuesday, he accused Iran of “arming those who are carrying out the slaughter” in neighbouring Syria.  “I would like to tell the world, today, as the talks between the major powers and Iran are being resumed, that Iran has changed neither its aggressive policy nor its brutal character. Iran is continuing to support the Assad regime, which is slaughtering its own people,” Mr Netanyahu said.

And this is where it gets embarrassing for Bibi: it was Israel that was arming Iran.

[A] court in Athens has told The Telegraph that parts appearing on an American list of forbidden military-grade materials had been shipped from Israel on two occasions, apparently destined for Iran.

 

The seized items comprised spare parts for military aircraft: a constant speed drive designed for the F-4 Phantom jet, and a voltage output sensor used in the F-14 Tomcat. The parts were confiscated by Greece’s financial crimes squad and were being sent to the US for investigation, court officials said.

 

 

Israeli arms dealers twice tried to send spare parts for fighter planes to Iran, The Telegraph has established, flouting an international arms embargo and openly contradicting the bitter enmity between the Jewish state and the Islamic regime.

 

The illegal shipments are now being investigated by the US Homeland Security Department after they were intercepted by authorities in Greece.

… 

 

The shipments – one in Dec 2012 and the other last April – were sent by courier from the Israeli town of Binyamina-Givat Ada, near Haifa, via a company in Greece, the newspaper reported. The firm was later established to be a ghost company. Its contact number was said to belong to a British national in the Greek city of Thessaloniki, who could not be traced.

Was Mossad involved? But of course.

A blogger, Richard Silverstein pointed the finger at two possible culprits who he said were well-known arms dealers living in Binyamina-Givat Ada. The pair had come to the attention of Israeli and US authorities on suspicion of violating the arms embargo on Iran in the past, Silverstein wrote, but had never been charged or prosecuted. “There can be no doubt that they are colluding with Israeli intelligence,” he added.

For those who are not convinced, “The defence and foreign ministries in Israel declined to comment on the seizures, which were first revealed by Kathimerini, a Greek newspaper.

Finally, tying it all together, is another report from Reuters. in which we learn that “as Syria’s war nears the start of its fourth year, Iran has stepped up support on the ground for President Bashar al-Assad, providing elite teams to gather intelligence and train troops, sources with knowledge of military movements say.

This further backing from Tehran, along with deliveries of munitions and equipment from Moscow, is helping to keep Assad in power at a time when neither his own forces nor opposition fighters have a decisive edge on the battlefield.

Assad’s forces have failed to capitalize fully on advances they made last summer with the help of Iran, his major backer in the region, and the Hezbollah fighters that Tehran backs and which have provided important battlefield support for Assad.

 

But the Syrian leader has drawn comfort from the withdrawal of the threat of U.S. bombing raids following a deal under which he has agreed to give up his chemical weapons.

 

Shi’te Iran has already spent billions of dollars propping up Assad in what has turned into a sectarian proxy war with Sunni Arab states. And while the presence of Iranian military personnel in Syria is not new, military experts believe Tehran has in recent months sent in more specialists to enable Assad to outlast his enemies at home and abroad.

 

Assad’s forces have failed to capitalize fully on advances they made last summer with the help of Iran, his major backer in the region, and the Hezbollah fighters that Tehran backs and which have provided important battlefield support for Assad.

 

But the Syrian leader has drawn comfort from the withdrawal of the threat of U.S. bombing raids following a deal under which he has agreed to give up his chemical weapons.

 

Shi’te Iran has already spent billions of dollars propping up Assad in what has turned into a sectarian proxy war with Sunni Arab states. And while the presence of Iranian military personnel in Syria is not new, military experts believe Tehran has in recent months sent in more specialists to enable Assad to outlast his enemies at home and abroad.

To summarize: in an act of complete disregard for the official diplomatic song and dance, both Israel and the US are now providing military support to Iran, which in turn is providing military support to Syria, which is also getting military support from Russia. And now, just to make things more interesting, the same labyrinth of “military support” is about to be unleashed in the Ukraine, whose western half is just as likely getting arms and military equipment (not to mention funding)from the West under the table, while Russia, whose main Black Sea port is in the Ukraine’s Crimean peninsula, is arming the Eastern part of the Ukraine.

What can possibly go wrong?


    



via Zero Hedge http://ift.tt/1eo8c0T Tyler Durden

Global Economy Collapses Despite 4th “Warmest” January On Record

The last 3 weeks have seen the macro fundamentals of the G-10 major economies collapse at the fastest pace in almost 4 years and almost the biggest slump since Lehman. Despite a plethora of data showing that 'weather' is not to blame, US strategists, 'economists', and asset-gatherers are sticking to the meme that this is all because of the cold on the east coast of the US (and that means wondrous pent-up demand to come). However, as the New York Times reports, for the earth, it was the 4th warmest January on record.

 

G-10 macro data is collapsing…

 

Must be the weather in the US, right?

For people throughout the Eastern United States who spent January slipping, sliding and shivering, here is a counter-intuitive fact: For the earth as a whole, it was the fourth-warmest January on record.

As NY Times reports,

But this might be another surprise: Despite all the weather drama, it was not a January for the record books.

 

By the time analysts averaged the heat in the West and the cold in the East, the national temperature for the month fell only one-tenth of a degree below the 20th-century average for January. January 2011 was colder.

 

No state set a monthly record for January cold. Alabama, also walloped by the ice storms, came closest, with the fourth-coldest January on its record books.

 

 

The United States covers only 2 percent of the surface of the globe, so what happens in this country does not have much influence on overall global temperatures.

 

Brazil, much of southern Africa, most of Europe, large parts of China and most of Australia were unseasonably warm in January, the National Oceanic and Atmospheric Administration reported Thursday. That continues a pattern of unusual global warming that is believed to be a consequence of human-caused emissions of greenhouse gases.

 

Even in the United States, more than a third of the country is in drought of varying intensity. Mountain snowpack in many parts of the West is only half of normal, portending a parched summer and a likelihood of severe wildfires.

 

 

But the cold weather in the East is being balanced, in a sense, by the bizarrely warm temperatures in the West. And that trend, too, is likely to continue.

 

The outlook over the next month is for continued above-normal temperatures in the West, the Southwest and parts of Alaska, as well as a continuation of the California drought, despite recent rains that have eased the situation slightly.

Can we finally put to bed the "weather" meme and perhaps, just perhaps, recognize that the global economy is slowing as the animal spirits exuberance of global central bank liquidity pump-priming has simply run its course and faces the reality of a debt-saturated, growth-stifled reality.

As the following publicly available paper notes, the years of 2.0% 'trend' growth for the US are over...

The United States achieved a 2.0 percent average annual growth rate of real GDP per capita between 1891 and 2007. This paper predicts that growth in the 25 to 40 years after 2007 will be much slower, particularly for the great majority of the population. Future growth will be 1.3 percent per annum for labor productivity in the total economy, 0.9 percent for output per capita, 0.4 percent for real income per capita of the bottom 99 percent of the income distribution, and 0.2 percent for the real disposable income of that group.

 

 

The primary cause of this growth slowdown is a set of four headwinds, all of them widely recognized and uncontroversial. Demographic shifts will reduce hours worked per capita, due not just to the retirement of the baby boom generation but also as a result of an exit from the labor force both of youth and prime-age adults. Educational attainment, a central driver of growth over the past century, stagnates at a plateau as the U.S. sinks lower in the world league tables of high school and college completion rates. Inequality continues to increase, resulting in real income growth for the bottom 99 percent of the income distribution that is fully half a point per year below the average growth of all incomes. A projected long-term increase in the ratio of debt to GDP at all levels of government will inevitably lead to more rapid growth in tax revenues and/or slower growth in transfer payments at some point within the next several decades.

 

There is no need to forecast any slowdown in the pace of future innovation for this gloomy forecast to come true, because that slowdown already occurred four decades ago. In the eight decades before 1972 labor productivity grew at an average rate 0.8 percent per year faster than in the four decades since 1972. While no forecast of a future slowdown of innovation is needed, skepticism is offered here, particularly about the techno-optimists who currently believe that we are at a point of inflection leading to faster technological change. The paper offers several historical examples showing that the future of technology can be forecast 50 or even 100 years in advance and assesses widely discussed innovations anticipated to occur over the next few decades, including medical research, small robots, 3-D printing, big data, driverless vehicles, and oil-gas fracking.

 

NBER by zerohedge


    



via Zero Hedge http://ift.tt/1hfFYd5 Tyler Durden

Global Economy Collapses Despite 4th "Warmest" January On Record

The last 3 weeks have seen the macro fundamentals of the G-10 major economies collapse at the fastest pace in almost 4 years and almost the biggest slump since Lehman. Despite a plethora of data showing that 'weather' is not to blame, US strategists, 'economists', and asset-gatherers are sticking to the meme that this is all because of the cold on the east coast of the US (and that means wondrous pent-up demand to come). However, as the New York Times reports, for the earth, it was the 4th warmest January on record.

 

G-10 macro data is collapsing…

 

Must be the weather in the US, right?

For people throughout the Eastern United States who spent January slipping, sliding and shivering, here is a counter-intuitive fact: For the earth as a whole, it was the fourth-warmest January on record.

As NY Times reports,

But this might be another surprise: Despite all the weather drama, it was not a January for the record books.

 

By the time analysts averaged the heat in the West and the cold in the East, the national temperature for the month fell only one-tenth of a degree below the 20th-century average for January. January 2011 was colder.

 

No state set a monthly record for January cold. Alabama, also walloped by the ice storms, came closest, with the fourth-coldest January on its record books.

 

 

The United States covers only 2 percent of the surface of the globe, so what happens in this country does not have much influence on overall global temperatures.

 

Brazil, much of southern Africa, most of Europe, large parts of China and most of Australia were unseasonably warm in January, the National Oceanic and Atmospheric Administration reported Thursday. That continues a pattern of unusual global warming that is believed to be a consequence of human-caused emissions of greenhouse gases.

 

Even in the United States, more than a third of the country is in drought of varying intensity. Mountain snowpack in many parts of the West is only half of normal, portending a parched summer and a likelihood of severe wildfires.

 

 

But the cold weather in the East is being balanced, in a sense, by the bizarrely warm temperatures in the West. And that trend, too, is likely to continue.

 

The outlook over the next month is for continued above-normal temperatures in the West, the Southwest and parts of Alaska, as well as a continuation of the California drought, despite recent rains that have eased the situation slightly.

Can we finally put to bed the "weather" meme and perhaps, just perhaps, recognize that the global economy is slowing as the animal spirits exuberance of global central bank liquidity pump-priming has simply run its course and faces the reality of a debt-saturated, growth-stifled reality.

As the following publicly available paper notes, the years of 2.0% 'trend' growth for the US are over...

The United States achieved a 2.0 percent average annual growth rate of real GDP per capita between 1891 and 2007. This paper predicts that growth in the 25 to 40 years after 2007 will be much slower, particularly for the great majority of the population. Future growth will be 1.3 percent per annum for labor productivity in the total economy, 0.9 percent for output per capita, 0.4 percent for real income per capita of the bottom 99 percent of the income distribution, and 0.2 percent for the real disposable income of that group.

 

 

The primary cause of this growth slowdown is a set of four headwinds, all of them widely recognized and uncontroversial. Demographic shifts will reduce hours worked per capita, due not just to the retirement of the baby boom generation but also as a result of an exit from the labor force both of youth and prime-age adults. Educational attainment, a central driver of growth over the past century, stagnates at a plateau as the U.S. sinks lower in the world league tables of high school and college completion rates. Inequality continues to increase, resulting in real income growth for the bottom 99 percent of the income distribution that is fully half a point per year below the average growth of all incomes. A projected long-term increase in the ratio of debt to GDP at all levels of government will inevitably lead to more rapid growth in tax revenues and/or slower growth in transfer payments at some point within the next several decades.

 

There is no need to forecast any slowdown in the pace of future innovation for this gloomy forecast to come true, because that slowdown already occurred four decades ago. In the eight decades before 1972 labor productivity grew at an average rate 0.8 percent per year faster than in the four decades since 1972. While no forecast of a future slowdown of innovation is needed, skepticism is offered here, particularly about the techno-optimists who currently believe that we are at a point of inflection leading to faster technological change. The paper offers several historical examples showing that the future of technology can be forecast 50 or even 100 years in advance and assesses widely discussed innovations anticipated to occur over the next few decades, including medical research, small robots, 3-D printing, big data, driverless vehicles, and oil-gas fracking.

 

NBER by zerohedge


    



via Zero Hedge http://ift.tt/1hfFYd5 Tyler Durden

The 6 Types Of Twitter Conversation

Social media is increasingly home to civil society. As Pew Research notes, it is the place where knowledge sharing, public discussions, debates, and disputes are carried out. As the new public square, social media conversations are therefore as important to document as any other large public gathering. By analyzing many thousands of Twitter conversations, Pew identified six different conversational archetypes. The following infographic describes each type of conversation network and an explanation of how it is shaped by the topic being discussed and the people driving the conversation.

 

 

Conversations on Twitter create networks with identifiable contours as people reply to and mention one another in their tweets. These conversational structures differ, depending on the subject and the people driving the conversation.

Six structures are regularly observed: divided, unified, fragmented, clustered, and inward and outward hub and spoke structures. These are created as individuals choose whom to reply to or mention in their Twitter messages and the structures tell a story about the nature of the conversation.

If a topic is political, it is common to see two separate, polarized crowds take shape. They form two distinct discussion groups that mostly do not interact with each other. Frequently these are recognizably liberal or conservative groups. The participants within each separate group commonly mention very different collections of website URLs and use distinct hashtags and words. The split is clearly evident in many highly controversial discussions: people in clusters that we identified as liberal used URLs for mainstream news websites, while groups we identified as conservative used links to conservative news websites and commentary sources. At the center of each group are discussion leaders, the prominent people who are widely replied to or mentioned in the discussion. In polarized discussions, each group links to a different set of influential people or organizations that can be found at the center of each conversation cluster.

Still, the structure of these Twitter conversations says something meaningful about political discourse these days and the tendency of politically active citizens to sort themselves into distinct partisan camps.

 

And on a slightly less socio-economically serious side, here’s 10 curious facts about Twitter…


    



via Zero Hedge http://ift.tt/1hIPokK Tyler Durden

The Tyranny Of Models (Or Don’t Fear The Reaper)

Submitted by Ben Hunt of Salient Partner's Epsilon Theory blog,

 

Buck Finemann, seventy two years old. Cantankerous old geezer. No-one liked him much, but they allowed him to play poker with them once a week because he was a terrible card player and had been known to lose as much as seventy five cents in a single evening.
Carl Kolchak, “Kolchak: The Nightstalker – Horror in the Heights”

Rakshasa: Known first in India, these evil spirits encased in flesh are spreading.
E. Gary Gygax, “Advanced Dungeons & Dragons, 1st Edition, Monster Manual”

So may the outward shows be least themselves.
The world is still deceived with ornament.

Thus ornament is but the guiled shore
To a most dangerous sea, the beauteous scarf
Veiling an Indian beauty—in a word,
The seeming truth which cunning times put on
To entrap the wisest.

Shakespeare, “The Merchant of Venice”

I would guess that not more than 1 in 100 Epsilon Theory readers remembers Darren McGavin in Kolchak: The Nightstalker. It’s a television series that only ran one year in the mid-1970’s, plus a couple of made-for-TV movies, but for whatever reason it made a big impression on me. A perpetually down-on-his-luck news wire stringer, Kolchak was a truth-seeker and a puzzle-solver, even if his truths and puzzles were found in the hidden corners and supernatural mysteries of 1970’s Chicago. Kolchak was Mulder before The X-Files was a gleam in Chris Carter’s eye.

My favorite Nightstalker episode involved a Rakshasa, an evil Indian spirit that could take the form of whatever human its victim trusted the most. For the unfortunate Buck Finemann it was his rabbi; for Kolchak (who thought himself immune because he trusted no one) it was his elderly neighbor. For weeks afterwards I enjoyed scaring myself by imagining that my family and friends were actually Rakshasas, just waiting for the most psychologically crushing moment to pounce. A few years later, when the first AD&D Monster Manual was released, I can’t tell you how delighted I was to see my old friend the Rakshasa playing a prominent role, captured perfectly by Dave Trampier’s drawing of a pipe-smoking tiger.

Almost all cultures have their mythological version of an evil shape-shifter who replaces a loved one. Sometimes it’s a child switched at birth; sometimes it’s an adult doppelgänger. The human animal has a primal fear of the counterfeit human…an alien consciousness possessing a perfectly “normal” human body…and it remains one of the foremost tropes for horror media, from “Invasion of the Body Snatchers” to “The Thing” to “The Omen”. We love to scare ourselves by imagining Rakshasas and their ilk.

In Indian mythology, however, the Rakshasa is less inherently malevolent than it is simply foreign or alien. It is an Outsider, with an entirely non-human conception of social organization and purpose, and it is this differentness, particularly when coupled with an intimately familiar external appearance, that frightens us. When the Other looks like us, we take it as a betrayal and we assume it must be a threat. External appearance is a signal, as powerful to us as a pheromone is to an ant, and as a eusocial animal we are biologically evolved and culturally trained to respond to these signals…positively to a familiar appearance and negatively to the unfamiliar. But the human animal makes immediate assumptions based on external appearance that go far beyond simple positive and negative affect. Virtually all of our communications – including the meaning we ascribe to language – are part and parcel of the cognitive models we form based on external appearance. There are plenty of good evolutionary reasons why the human animal places such an inordinate reliance on external appearances to drive our Bayesian decision-making processes, plenty of reasons why we are so suspicious of differentness, so trusting of sameness. But all of these good reasons were developed for small group subsistence on the African savanna 100,000 years ago, not modern mass society.

In 1952 John Steinbeck published East of Eden, the book he considered to be his masterpiece. There’s a passage in this book – a startling conversation between the wealthy farmer Samuel and his Cantonese cook, Lee – which reveals beautifully the chasm of meaning and understanding in our communications perniciously created by our group-oriented, external appearance-focused, social animal nature. It’s a genius observation of the human condition, and I hope it prompts you to read the book.

“Lee,” he said at last, “I mean no disrespect, but I’ve never been able to figure out why you people still talk pidgin when an illiterate baboon from the black bogs of Ireland, with a head full of Gaelic and a tongue like a potato, learns to talk a poor grade of English in ten years.”

Lee grinned. “Me talkee Chinese talk,” he said.

“Well, I guess you have your response. And it’s not my affair. I hope you’ll forgive me if I don’t believe it, Lee.”

Lee looked at him and the brown eyes under their rounded upper lids seemed to deepen until they weren’t foreign any more, but man’s eyes, warm and understanding. Lee chuckled. “It’s more than a convenience,” he said. “It’s even more than self-protection. Mostly we have to use it to be understood at all.”

Samuel showed no sign of having observed any change. “I can understand the first two,” he said thoughtfully, “but the third escapes me.”

Lee said. “I know it’s hard to believe, but it has happened so often to me and to my friends that we take it for granted. If I should go up to a lady or gentleman, for instance, and speak as I am doing now, I wouldn’t be understood.”

“Why not?”

“Pidgin they expect, and pidgin they’ll listen to. But English from me they don’t listen to, and so they don’t understand it.”

“Can that be possible? How do I understand you?”

“That’s why I’m talking to you. You are one of the rare people who can separate your observation from your preconception.”…“I'm wondering whether I can explain," said Lee. "Where there is no likeness of experience it's very difficult. I understand you were not born in America."

"No, in Ireland."

"And in a few years you can almost disappear; while I, who was born in Grass Valley, went to school and several years to the University of California, have no chance of mixing."

"If you cut your queue, dressed and talked like other people?"

"No. I tried it. To the so-called whites I was still a Chinese, but an untrustworthy one; and at the same time my Chinese friends steered clear of me. I had to give it up.”
John Steinbeck, “East of Eden”

Steinbeck didn’t know it, but his observation of the false differentness generated by race is exactly what evolutionary science reveals. In fact, from a human evolutionary perspective, the external characteristics that we associate with race have almost nothing to do with fundamental differentness or genetic diversity.

This is a Wikimedia Commons map of the human migration out of Africa (upper left of diagram, North Pole in the center), showing our inexorable advancement to every corner of the globe. By testing the persistent mutations of mitochondrial DNA of modern humans (passed from mothers to their children, so tracing the matrilineal line), we can identify which genetic populations (called haplo-groups) precede others, and by how long. The earliest splits of the mtDNA haplogroup occurred within Africa itself (L1, L2, and L3) between 130,000 and 170,000 years ago. Once out of Africa the human animal migrated first to South and Southeast Asia (60 – 70,000 years ago), then to Europe (40 – 50,000 years ago), and from there to East Asia, North America, and South America.

What does this mean? It means that four Khoisan who live within 200 miles of each other are, genetically speaking, more fundamentally different from each other than Mao Zedong and Ronald Reagan.

Nature. 2010 February 18; 463(7283): 943-947 (National Institutes of Health Public Access)

It’s not that the Khoisan are somehow more primitive or “less evolved” than Europeans or Asians. They are just as evolved as any other group of humans. It simply means that because their respective tribes separated from each other about 150,000 years ago, their genetic codes have mutated independently for a lot longer than the Chinese and American tribes. Mao and Reagan share a common matrilineal ancestor from maybe 40,000 years ago. !Gubi and G/aq’o, on the other hand, have to go back 150,000 years to find their common mother. There is enormous genotype differentiation between the various sub-linguistic groups of the Khoisan despite very little phenotype differentiation…from a human perspective the Khoisan are a veritable Amazon rainforest of genetic diversity. They don’t look different, but genetically speaking they are VERY different. On the other hand, the genetic diversity found within a modern, cosmopolitan city – no matter how much of an ethnic and racial melting pot it might be – is quite low by comparison. It’s a hard concept to grasp because it goes against the “evidence” of our own eyes, but the distinction between genotype and phenotype (and the primacy of the former for explanatory usefulness) is about as important a concept as there is in evolutionary theory.

Fair enough, Ben…thanks for the science lesson. But what in the world does all this have to do with investing?

The notion of the Other – the concept of differentness – is at the heart of portfolio theory, modern or otherwise. Portfolio theory works because of the Other, because of non-correlated and independent investment choices with differentiated return profiles. If the human animal has a hard time perceiving the Other correctly, if we are poor judges of what does and does not make for fundamental diversity, then we have a big problem with portfolio theory…a problem that will never be perceived, much less addressed, if we do not focus on our evolutionary baggage to become better judges of what generates substantive portfolio diversification. There is no bigger issue in portfolio risk management than the accurate identification of diversifying exposures, no more important topic for an Epsilon Theory perspective.

Here’s my point: we place waaaay too much emphasis on a security’s external appearance – its asset class or sector – in making our portfolio decisions. We place waaaay too much emphasis on a manager’s external appearance – his style box – in making our portfolio decisions. Do we need this sort of simplifying classification or modeling as part of our investment evaluation process? Sure. But to define the diversification qualities of an investment in terms of its phenotype rather than its genotype…well, that’s a mistake. I think that there is enormous room for improvement in constructing smart portfolios if we can stop staring at surface appearances and start focusing on the investment DNA of securities and strategies.

Of course, there’s no such thing as a genetic sequencing assay for an investment or a strategy, so what does this mean in practice, that we should focus on the investment DNA of a security or strategy? If we’re not going to measure the diversification of a portfolio by externally visible characteristics such as asset class or style box, then what are we supposed to do? I think the answer is to look at the externally visible attribute that is most closely linked to the diversity of the human haplogroup: language. I’ve written about this at length, so won’t repeat all that here. The basic idea, though, is that just as linguistic evolution maps almost perfectly to human adaptive radiation and the way our species spread into new environments out of Southern Africa, so, too, are there investment languages and grammars that map to the underlying “DNA” of a security or strategy. The ancient investment languages are Value (together with its grammar, Reversion to the Mean) and Growth (together with its grammar, Extrapolation), and the relative mix of these languages in the description and practice of securities and strategies reveals an enormous amount about their hidden “genotype”.

From this Epsilon Theory perspective, a portfolio comprised of various large-cap US industrial and banking stocks (almost all of which speak a strong Value dialect) would receive much less diversification benefit than a traditional perspective would suggest from an allocation to a macro hedge fund that used various reversion-to-the-mean strategies for currency trades. Conversely, I suspect that a portfolio holding Microsoft (Value-speaking) could receive a significant diversification benefit from adding Salesforce.com (Growth-speaking), even though they are both large-cap tech stocks. I think that there are dozens of ways to put this focus on investment language, investment grammar, and by extension – investment genotype – into practical use for the construction of better-diversified portfolios, and I’ll be spending a lot of time in the coming months testing these applications.

To be sure, this isn’t the first time in the history of the world that someone has suggested looking through surface characteristics such as asset class to find more useful dimensions of portfolio diversification.

For years, Ray Dalio and Bridgewater have been advocating something very similar to this notion with their argument concerning the weakness of asset class correlations in determining optimal portfolio allocations. Dalio’s point – which is the theoretical foundation of Bridgewater’s All-Weather risk parity strategy – is that the correlation of returns between asset classes like stocks and bonds is neither constant nor random. The correlation waxes and wanes over time, with long periods of negative correlation and long periods of positive correlation that must reflect some underlying force. Dalio calls this underlying force the macroeconomic “machine”, which at any given point in time reflects what other people call a “regime”…some combination of inflation and growth characteristics within a context of debt cyclicality to which stocks and bonds respond in predictable ways. Depending on the current regime (which tends to change slowly), stocks and bonds will have either a strong or weak, positive or negative correlation to each other, but there’s nothing meaningful about that correlation. What’s meaningful is the relationship or correlation between stocks and bonds to the macro regime. If you can measure the inflation/growth regime accurately and you know the performance relationship of asset classes to this underlying force, then voilà…you can construct a portfolio of stocks and bonds (and other assets, like commodities) that should perform as well as it is possible to perform within the given regime, where good performance is defined as the most reward for the least volatility. Or so the argument goes.

I think it’s a good argument. Dalio’s theory of why a risk-balanced portfolio works is not the skin-deep perspective embedded in most portfolio construction efforts. Dalio is saying that there’s nothing special about this asset class or that asset class in determining a risk-balanced portfolio, no magical ratio, 60/40 or otherwise, of stocks to bonds. The Bridgewater approach isn’t focused on “balancing” asset classes at all, because there’s really nothing of importance to balance here, no meaning in asset classes per se. Securities are simply instruments that reflect an underlying economic regime with their performance characteristics, and a portfolio should be constructed on the basis of combining these securities in the best possible risk/reward configuration given the underlying regime, period. Sometimes this will mean a lot of stocks and a few bonds; more typically this will mean a lot of bonds and a few stocks. Either way, the Bridgewater approach looks beneath the asset class skin of a security, and that’s a good start.

But it’s only a start. I want to suggest an alternative conceptual basis for risk-balanced portfolio construction, one that doesn’t rely on a deterministic model of the economy.

Moving from an asset class conception of correlation and risk to an inflation/growth regime conception of correlation and risk is not really a fundamental change in perspective. We’re still talking about external characteristics, only now we’re talking about the economy as a whole rather than asset classes or individual securities. It’s like a Hindu mystic saying that it’s wrong to conceive of the world being supported by four elephants, but that what you really need to look for is the turtle that supports the elephants.

The problem, of course, is that once you accept this concept, you have to ask what the turtle is standing on. The Bridgewater answer is that the macroeconomic turtle-machine is the first mover, the Aristotelian primum mobile, the bedrock on which everything else rests. The only acceptable complement to the beta portfolio in Bridgewater’s turtle-machine framework has to be confined to the realm of “alpha” or skill-based returns that cannot be modeled as a systematic or identifiable phenomenon. The relationships between assets and the macroeconomic machine are “timeless and universal” to quote Bridgewater co-CIO Bob Prince, which means that it’s difficult for their model to account for a regime of regimes, a long and unpredictable game by which political and social forces shape and transform the investment meaning and return correlation of a security to the macroeconomic characteristics of inflation and growth. We believe that these political and social forces are both detectable and actionable and would be more appropriately identified as components of epsilon rather than alpha.

Why is this a problem? Because as the story goes, it’s not nothing beneath that first turtle, but rather more and more turtles…all the way down in an infinite expanse of turtle-dom. In this Epsilon Theory scenario, below the economic turtle-machine is a political turtle-machine, and below that is a social turtle-machine, and below that is a human animal turtle-machine, etc. etc. The lower the turtle, the more slow-moving it is, and the more likely you can ignore its existence for the sake of expedient model prediction at any given point in time. But if you are unfortunate enough to be investing on the basis of your economic turtle-machine when one of the lower turtles lurches forward…you’re in for a nasty surprise. What might this look like? Consider that for most of the past 2,000 years it has been illegal to accept interest payments for a loan to a company, much less to securitize that sort of loan into a bond. Read The Merchant Of Venice again if you need a refresher course in the scope and power of usury laws. Or for a more recent example, consider that private residential mortgage-backed securities hardly existed prior to 2001, were a $4 trillion asset class by the end of 2007, and are now totally moribund, simply running off into oblivion. I just don’t think it’s crazy to imagine large and unpredictable shifts in the economic machine borne out of political and social change. In fact, I think it’s crazy not to expect these shifts, even if the timing and focus of the lurch is impossible to predict.

There are two ways out of the infinite turtles problem. The first, which is what I imagine the Bridgewater Elect are doing, is to expand the macroeconomic machine to include political and social sub-machines. If you’ve ever read Isaac Asimov’s Foundation Trilogy, you can easily imagine Ray Dalio as Hari Seldon, with a legion of psychohistorians figuring out more and more equations to incorporate into a massive econometric model of human society and mass behavior.

The second way out (which I favor for precisely the reasons that Seldon’s model failed) is to reject the notion of ANY mechanistic model of how the world works in favor of a profound agnosticism about what the future holds. The only constants I’m willing to accept, particularly in a period of global deleveraging and ferocious political fragmentation within and between countries, are the constants of human nature. My predictions for the markets in 2014 are that fear and greed will still reign supreme, that investors will still speak ancient languages of Value and Growth, and that emergent behaviors like the Common Knowledge Game will drive short to medium-term price levels in many securities.

I believe that a risk-balanced portfolio – if it explicitly includes both the grammar of Reversion-to-the-Mean and the grammar of Extrapolation – can be as responsive and adaptive to changing patterns and market-moving forces as you want it to be, whether or not you have the right model to explain why those patterns are shifting. As recently as 10 years ago a simplifying macroeconomic model was an absolute necessity for making sense of all the signals that the world throws at us minute after minute. A model, by definition, will ignore certain signals. It’s what models DO. They simplify the world and occasionally miss important signals so that we are not drowned by the sheer flood of less important signals. It’s a trade-off that used to be necessary…but it’s not anymore.

We are in the midst of an information processing revolution – a quantum leap forward in inductive reasoning and inference colloquially named Big Data – that is every bit as important for portfolio management as the economic theory developed by Markowitz et al in the 1950’s. Today we can measure the market world – all of it – and infer the likelihood function of any given pattern or outcome. We know what the past patterns have been and we have the tools to sound an alarm if those patterns start to change, for whatever reason. We no longer have to model the economic world and intentionally cut ourselves off from potentially useful signals because they don’t fit our preconceptions. We no longer have to be the ladies and gentlemen that Steinbeck described, unable to understand Lee if he spoke anything other than pidgin English, because otherwise he would not fit their model of who Lee was. We can be like Samuel, one of the rare people able to separate our observations from our preconceptions. You cannot do that if you approach the world constrained by a model. Sorry, but you can’t.

The tyranny of models is rampant in almost every aspect of our investment lives, from every central bank in the world to every giant asset manager in the world to the largest hedge funds in the world. There are very good reasons why we live in a model-driven world, and there are very good reasons why model-driven institutions tend to dominate their non-modeling competitors. The use of models is wonderfully comforting to the human animal because it’s what we do in our own minds and our own groups and tribes all the time. We can’t help ourselves from applying simplifying models in our lives because we are evolved and trained to do just that. But models are most useful in normal times, where the inherent informational trade-off between modeling power and modeling comprehensiveness isn’t a big concern and where historical patterns don’t break. Unfortunately we are living in decidedly abnormal times, a time where simplifications can blind us to structural change and where models create a risk that cannot be resolved by more or better modeling! It’s not a matter of using a different model or improving the model that we have. It’s the risk that ALL economic models pose when a bedrock assumption about politics or society shifts. If you’re not prepared to look past your model…if you’re not prepared, as Steinbeck wrote, to separate your observations from your preconceptions…then you have a big invisible risk in your portfolio.

I know it’s hard to embrace what I’m describing as a profound agnosticism about the mechanics of how the world works. I know it goes against our biological grain to reject the comfort and succor of a deterministic model and an Answer. In many respects, deep agnosticism is the ultimate Other. It is a non-human perspective on how to think about the world – a Rakshasa – and I’m not expecting it to receive a warm or trusting welcome, particularly when it has the skin of some familiar investment product. But I think it’s the right way to look at a world wracked by political fragmentation, saddled with enormous debts, and engaged in the greatest monetary policy experiments ever devised by man. I think it’s the right way to look at a world of massive uncertainty, as opposed to a world of merely substantial risk, and it’s the perspective I’ll continue to take with Epsilon Theory.


    



via Zero Hedge http://ift.tt/1hfusyx Tyler Durden

The Tyranny Of Models (Or Don't Fear The Reaper)

Submitted by Ben Hunt of Salient Partner's Epsilon Theory blog,

 

Buck Finemann, seventy two years old. Cantankerous old geezer. No-one liked him much, but they allowed him to play poker with them once a week because he was a terrible card player and had been known to lose as much as seventy five cents in a single evening.
Carl Kolchak, “Kolchak: The Nightstalker – Horror in the Heights”

Rakshasa: Known first in India, these evil spirits encased in flesh are spreading.
E. Gary Gygax, “Advanced Dungeons & Dragons, 1st Edition, Monster Manual”

So may the outward shows be least themselves.
The world is still deceived with ornament.

Thus ornament is but the guiled shore
To a most dangerous sea, the beauteous scarf
Veiling an Indian beauty—in a word,
The seeming truth which cunning times put on
To entrap the wisest.

Shakespeare, “The Merchant of Venice”

I would guess that not more than 1 in 100 Epsilon Theory readers remembers Darren McGavin in Kolchak: The Nightstalker. It’s a television series that only ran one year in the mid-1970’s, plus a couple of made-for-TV movies, but for whatever reason it made a big impression on me. A perpetually down-on-his-luck news wire stringer, Kolchak was a truth-seeker and a puzzle-solver, even if his truths and puzzles were found in the hidden corners and supernatural mysteries of 1970’s Chicago. Kolchak was Mulder before The X-Files was a gleam in Chris Carter’s eye.

My favorite Nightstalker episode involved a Rakshasa, an evil Indian spirit that could take the form of whatever human its victim trusted the most. For the unfortunate Buck Finemann it was his rabbi; for Kolchak (who thought himself immune because he trusted no one) it was his elderly neighbor. For weeks afterwards I enjoyed scaring myself by imagining that my family and friends were actually Rakshasas, just waiting for the most psychologically crushing moment to pounce. A few years later, when the first AD&D Monster Manual was released, I can’t tell you how delighted I was to see my old friend the Rakshasa playing a prominent role, captured perfectly by Dave Trampier’s drawing of a pipe-smoking tiger.

Almost all cultures have their mythological version of an evil shape-shifter who replaces a loved one. Sometimes it’s a child switched at birth; sometimes it’s an adult doppelgänger. The human animal has a primal fear of the counterfeit human…an alien consciousness possessing a perfectly “normal” human body…and it remains one of the foremost tropes for horror media, from “Invasion of the Body Snatchers” to “The Thing” to “The Omen”. We love to scare ourselves by imagining Rakshasas and their ilk.

In Indian mythology, however, the Rakshasa is less inherently malevolent than it is simply foreign or alien. It is an Outsider, with an entirely non-human conception of social organization and purpose, and it is this differentness, particularly when coupled with an intimately familiar external appearance, that frightens us. When the Other looks like us, we take it as a betrayal and we assume it must be a threat. External appearance is a signal, as powerful to us as a pheromone is to an ant, and as a eusocial animal we are biologically evolved and culturally trained to respond to these signals…positively to a familiar appearance and negatively to the unfamiliar. But the human animal makes immediate assumptions based on external appearance that go far beyond simple positive and negative affect. Virtually all of our communications – including the meaning we ascribe to language – are part and parcel of the cognitive models we form based on external appearance. There are plenty of good evolutionary reasons why the human animal places such an inordinate reliance on external appearances to drive our Bayesian decision-making processes, plenty of reasons why we are so suspicious of differentness, so trusting of sameness. But all of these good reasons were developed for small group subsistence on the African savanna 100,000 years ago, not modern mass society.

In 1952 John Steinbeck published East of Eden, the book he considered to be his masterpiece. There’s a passage in this book – a startling conversation between the wealthy farmer Samuel and his Cantonese cook, Lee – which reveals beautifully the chasm of meaning and understanding in our communications perniciously created by our group-oriented, external appearance-focused, social animal nature. It’s a genius observation of the human condition, and I hope it prompts you to read the book.

“Lee,” he said at last, “I mean no disrespect, but I’ve never been able to figure out why you people still talk pidgin when an illiterate baboon from the black bogs of Ireland, with a head full of Gaelic and a tongue like a potato, learns to talk a poor grade of English in ten years.”

Lee grinned. “Me talkee Chinese talk,” he said.

“Well, I guess you have your response. And it’s not my affair. I hope you’ll forgive me if I don’t believe it, Lee.”

Lee looked at him and the brown eyes under their rounded upper lids seemed to deepen until they weren’t foreign any more, but man’s eyes, warm and understanding. Lee chuckled. “It’s more than a convenience,” he said. “It’s even more than self-protection. Mostly we have to use it to be understood at all.”

Samuel showed no sign of having observed any change. “I can understand the first two,” he said thoughtfully, “but the third escapes me.”

Lee said. “I know it’s hard to believe, but it has happened so often to me and to my friends that we take it for granted. If I should go up to a lady or gentleman, for instance, and speak as I am doing now, I wouldn’t be understood.”

“Why not?”

“Pidgin they expect, and pidgin they’ll listen to. But English from me they don’t listen to, and so they don’t understand it.”

“Can that be possible? How do I understand you?”

“That’s why I’m talking to you. You are one of the rare people who can separate your observation from your preconception.”…“I'm wondering whether I can explain," said Lee. "Where there is no likeness of experience it's very difficult. I understand you were not born in America."

"No, in Ireland."

"And in a few years you can almost disappear; while I, who was born in Grass Valley, went to school and several years to the University of Califo
rnia, have no chance of mixing."

"If you cut your queue, dressed and talked like other people?"

"No. I tried it. To the so-called whites I was still a Chinese, but an untrustworthy one; and at the same time my Chinese friends steered clear of me. I had to give it up.”
John Steinbeck, “East of Eden”

Steinbeck didn’t know it, but his observation of the false differentness generated by race is exactly what evolutionary science reveals. In fact, from a human evolutionary perspective, the external characteristics that we associate with race have almost nothing to do with fundamental differentness or genetic diversity.

This is a Wikimedia Commons map of the human migration out of Africa (upper left of diagram, North Pole in the center), showing our inexorable advancement to every corner of the globe. By testing the persistent mutations of mitochondrial DNA of modern humans (passed from mothers to their children, so tracing the matrilineal line), we can identify which genetic populations (called haplo-groups) precede others, and by how long. The earliest splits of the mtDNA haplogroup occurred within Africa itself (L1, L2, and L3) between 130,000 and 170,000 years ago. Once out of Africa the human animal migrated first to South and Southeast Asia (60 – 70,000 years ago), then to Europe (40 – 50,000 years ago), and from there to East Asia, North America, and South America.

What does this mean? It means that four Khoisan who live within 200 miles of each other are, genetically speaking, more fundamentally different from each other than Mao Zedong and Ronald Reagan.

Nature. 2010 February 18; 463(7283): 943-947 (National Institutes of Health Public Access)

It’s not that the Khoisan are somehow more primitive or “less evolved” than Europeans or Asians. They are just as evolved as any other group of humans. It simply means that because their respective tribes separated from each other about 150,000 years ago, their genetic codes have mutated independently for a lot longer than the Chinese and American tribes. Mao and Reagan share a common matrilineal ancestor from maybe 40,000 years ago. !Gubi and G/aq’o, on the other hand, have to go back 150,000 years to find their common mother. There is enormous genotype differentiation between the various sub-linguistic groups of the Khoisan despite very little phenotype differentiation…from a human perspective the Khoisan are a veritable Amazon rainforest of genetic diversity. They don’t look different, but genetically speaking they are VERY different. On the other hand, the genetic diversity found within a modern, cosmopolitan city – no matter how much of an ethnic and racial melting pot it might be – is quite low by comparison. It’s a hard concept to grasp because it goes against the “evidence” of our own eyes, but the distinction between genotype and phenotype (and the primacy of the former for explanatory usefulness) is about as important a concept as there is in evolutionary theory.

Fair enough, Ben…thanks for the science lesson. But what in the world does all this have to do with investing?

The notion of the Other – the concept of differentness – is at the heart of portfolio theory, modern or otherwise. Portfolio theory works because of the Other, because of non-correlated and independent investment choices with differentiated return profiles. If the human animal has a hard time perceiving the Other correctly, if we are poor judges of what does and does not make for fundamental diversity, then we have a big problem with portfolio theory…a problem that will never be perceived, much less addressed, if we do not focus on our evolutionary baggage to become better judges of what generates substantive portfolio diversification. There is no bigger issue in portfolio risk management than the accurate identification of diversifying exposures, no more important topic for an Epsilon Theory perspective.

Here’s my point: we place waaaay too much emphasis on a security’s external appearance – its asset class or sector – in making our portfolio decisions. We place waaaay too much emphasis on a manager’s external appearance – his style box – in making our portfolio decisions. Do we need this sort of simplifying classification or modeling as part of our investment evaluation process? Sure. But to define the diversification qualities of an investment in terms of its phenotype rather than its genotype…well, that’s a mistake. I think that there is enormous room for improvement in constructing smart portfolios if we can stop staring at surface appearances and start focusing on the investment DNA of securities and strategies.

Of course, there’s no such thing as a genetic sequencing assay for an investment or a strategy, so what does this mean in practice, that we should focus on the investment DNA of a security or strategy? If we’re not going to measure the diversification of a portfolio by externally visible characteristics such as asset class or style box, then what are we supposed to do? I think the answer is to look at the externally visible attribute that is most closely linked to the diversity of the human haplogroup: language. I’ve written about this at length, so won’t repeat all that here. The basic idea, though, is that just as linguistic evolution maps almost perfectly to human adaptive radiation and the way our species spread into new environments out of Southern Africa, so, too, are there investment languages and grammars that map to the underlying “DNA” of a security or strategy. The ancient investment languages are Value (together with its grammar, Reversion to the Mean) and Growth (together with its grammar, Extrapolation), and the relative mix of these languages in the description and practice of securities and strategies reveals an enormous amount about their hidden “genotype”.

From this Epsilon Theory perspective, a portfolio comprised of various large-cap US industrial and banking stocks (almost all of which speak a strong Value dialect) would receive much less diversification benefit than a traditional perspective would suggest from an allocation to a macro hedge fund that used various reversion-to-the-mean strategies for currency trades. Conversely, I suspect that a portfolio holding Microsoft (Value-speaking) could receive a significant diversification benefit from adding Salesforce.com (Growth-speaking), even though they are both large-cap tech stocks. I think that there are dozens of ways to put this focus on investment language, investment grammar, and by extension – investment genotype – into practical use for the construction of better-diversified po
rtfolios, and I’ll be spending a lot of time in the coming months testing these applications.

To be sure, this isn’t the first time in the history of the world that someone has suggested looking through surface characteristics such as asset class to find more useful dimensions of portfolio diversification.

For years, Ray Dalio and Bridgewater have been advocating something very similar to this notion with their argument concerning the weakness of asset class correlations in determining optimal portfolio allocations. Dalio’s point – which is the theoretical foundation of Bridgewater’s All-Weather risk parity strategy – is that the correlation of returns between asset classes like stocks and bonds is neither constant nor random. The correlation waxes and wanes over time, with long periods of negative correlation and long periods of positive correlation that must reflect some underlying force. Dalio calls this underlying force the macroeconomic “machine”, which at any given point in time reflects what other people call a “regime”…some combination of inflation and growth characteristics within a context of debt cyclicality to which stocks and bonds respond in predictable ways. Depending on the current regime (which tends to change slowly), stocks and bonds will have either a strong or weak, positive or negative correlation to each other, but there’s nothing meaningful about that correlation. What’s meaningful is the relationship or correlation between stocks and bonds to the macro regime. If you can measure the inflation/growth regime accurately and you know the performance relationship of asset classes to this underlying force, then voilà…you can construct a portfolio of stocks and bonds (and other assets, like commodities) that should perform as well as it is possible to perform within the given regime, where good performance is defined as the most reward for the least volatility. Or so the argument goes.

I think it’s a good argument. Dalio’s theory of why a risk-balanced portfolio works is not the skin-deep perspective embedded in most portfolio construction efforts. Dalio is saying that there’s nothing special about this asset class or that asset class in determining a risk-balanced portfolio, no magical ratio, 60/40 or otherwise, of stocks to bonds. The Bridgewater approach isn’t focused on “balancing” asset classes at all, because there’s really nothing of importance to balance here, no meaning in asset classes per se. Securities are simply instruments that reflect an underlying economic regime with their performance characteristics, and a portfolio should be constructed on the basis of combining these securities in the best possible risk/reward configuration given the underlying regime, period. Sometimes this will mean a lot of stocks and a few bonds; more typically this will mean a lot of bonds and a few stocks. Either way, the Bridgewater approach looks beneath the asset class skin of a security, and that’s a good start.

But it’s only a start. I want to suggest an alternative conceptual basis for risk-balanced portfolio construction, one that doesn’t rely on a deterministic model of the economy.

Moving from an asset class conception of correlation and risk to an inflation/growth regime conception of correlation and risk is not really a fundamental change in perspective. We’re still talking about external characteristics, only now we’re talking about the economy as a whole rather than asset classes or individual securities. It’s like a Hindu mystic saying that it’s wrong to conceive of the world being supported by four elephants, but that what you really need to look for is the turtle that supports the elephants.

The problem, of course, is that once you accept this concept, you have to ask what the turtle is standing on. The Bridgewater answer is that the macroeconomic turtle-machine is the first mover, the Aristotelian primum mobile, the bedrock on which everything else rests. The only acceptable complement to the beta portfolio in Bridgewater’s turtle-machine framework has to be confined to the realm of “alpha” or skill-based returns that cannot be modeled as a systematic or identifiable phenomenon. The relationships between assets and the macroeconomic machine are “timeless and universal” to quote Bridgewater co-CIO Bob Prince, which means that it’s difficult for their model to account for a regime of regimes, a long and unpredictable game by which political and social forces shape and transform the investment meaning and return correlation of a security to the macroeconomic characteristics of inflation and growth. We believe that these political and social forces are both detectable and actionable and would be more appropriately identified as components of epsilon rather than alpha.

Why is this a problem? Because as the story goes, it’s not nothing beneath that first turtle, but rather more and more turtles…all the way down in an infinite expanse of turtle-dom. In this Epsilon Theory scenario, below the economic turtle-machine is a political turtle-machine, and below that is a social turtle-machine, and below that is a human animal turtle-machine, etc. etc. The lower the turtle, the more slow-moving it is, and the more likely you can ignore its existence for the sake of expedient model prediction at any given point in time. But if you are unfortunate enough to be investing on the basis of your economic turtle-machine when one of the lower turtles lurches forward…you’re in for a nasty surprise. What might this look like? Consider that for most of the past 2,000 years it has been illegal to accept interest payments for a loan to a company, much less to securitize that sort of loan into a bond. Read The Merchant Of Venice again if you need a refresher course in the scope and power of usury laws. Or for a more recent example, consider that private residential mortgage-backed securities hardly existed prior to 2001, were a $4 trillion asset class by the end of 2007, and are now totally moribund, simply running off into oblivion. I just don’t think it’s crazy to imagine large and unpredictable shifts in the economic machine borne out of political and social change. In fact, I think it’s crazy not to expect these shifts, even if the timing and focus of the lurch is impossible to predict.

There are two ways out of the infinite turtles problem. The first, which is what I imagine the Bridgewater Elect are doing, is to expand the macroeconomic machine to include political and social sub-machines. If you’ve ever read Isaac Asimov’s Foundation Trilogy, you can easily imagine Ray Dalio as Hari Seldon, with a legion of psychohistorians figuring out more and more equations to incorporate into a massive econometric model of human society and mass behavior.

The second way out (which I favor for precisely the reasons that Seldon’s model failed) is to reject the notion of ANY mechanistic model of how the world works in favor of a profound agnosticism about what the future holds. The only constants I’m willing to accept, particularly in a period of global deleveraging and ferocious political fragmentation within and between countries, are the constants of human nature. My predictions for the markets in 2014 are that fear and greed will still reign supreme, that investors will still speak ancient languages of Value and Growth, and that emergent behaviors like the Common Knowledge Game will drive short to medium-term price levels in many securities.

I believe that a risk-balanced portfolio – if it explicitly includes
both the grammar of Reversion-to-the-Mean and the grammar of Extrapolation – can be as responsive and adaptive to changing patterns and market-moving forces as you want it to be, whether or not you have the right model to explain why those patterns are shifting. As recently as 10 years ago a simplifying macroeconomic model was an absolute necessity for making sense of all the signals that the world throws at us minute after minute. A model, by definition, will ignore certain signals. It’s what models DO. They simplify the world and occasionally miss important signals so that we are not drowned by the sheer flood of less important signals. It’s a trade-off that used to be necessary…but it’s not anymore.

We are in the midst of an information processing revolution – a quantum leap forward in inductive reasoning and inference colloquially named Big Data – that is every bit as important for portfolio management as the economic theory developed by Markowitz et al in the 1950’s. Today we can measure the market world – all of it – and infer the likelihood function of any given pattern or outcome. We know what the past patterns have been and we have the tools to sound an alarm if those patterns start to change, for whatever reason. We no longer have to model the economic world and intentionally cut ourselves off from potentially useful signals because they don’t fit our preconceptions. We no longer have to be the ladies and gentlemen that Steinbeck described, unable to understand Lee if he spoke anything other than pidgin English, because otherwise he would not fit their model of who Lee was. We can be like Samuel, one of the rare people able to separate our observations from our preconceptions. You cannot do that if you approach the world constrained by a model. Sorry, but you can’t.

The tyranny of models is rampant in almost every aspect of our investment lives, from every central bank in the world to every giant asset manager in the world to the largest hedge funds in the world. There are very good reasons why we live in a model-driven world, and there are very good reasons why model-driven institutions tend to dominate their non-modeling competitors. The use of models is wonderfully comforting to the human animal because it’s what we do in our own minds and our own groups and tribes all the time. We can’t help ourselves from applying simplifying models in our lives because we are evolved and trained to do just that. But models are most useful in normal times, where the inherent informational trade-off between modeling power and modeling comprehensiveness isn’t a big concern and where historical patterns don’t break. Unfortunately we are living in decidedly abnormal times, a time where simplifications can blind us to structural change and where models create a risk that cannot be resolved by more or better modeling! It’s not a matter of using a different model or improving the model that we have. It’s the risk that ALL economic models pose when a bedrock assumption about politics or society shifts. If you’re not prepared to look past your model…if you’re not prepared, as Steinbeck wrote, to separate your observations from your preconceptions…then you have a big invisible risk in your portfolio.

I know it’s hard to embrace what I’m describing as a profound agnosticism about the mechanics of how the world works. I know it goes against our biological grain to reject the comfort and succor of a deterministic model and an Answer. In many respects, deep agnosticism is the ultimate Other. It is a non-human perspective on how to think about the world – a Rakshasa – and I’m not expecting it to receive a warm or trusting welcome, particularly when it has the skin of some familiar investment product. But I think it’s the right way to look at a world wracked by political fragmentation, saddled with enormous debts, and engaged in the greatest monetary policy experiments ever devised by man. I think it’s the right way to look at a world of massive uncertainty, as opposed to a world of merely substantial risk, and it’s the perspective I’ll continue to take with Epsilon Theory.


    



via Zero Hedge http://ift.tt/1hfusyx Tyler Durden

Why No Capex Recovery?

In the spring of 2012, we predicted that not only would corporate excess cash not go toward such core economic recovery “uses of funds” as CapEx, not only for the simple reason that there was, and is, no actual recovery, but that in order to create the artificial impression of improving conditions, as well as the satisfy activist investors seeking a quick ROI, companies would spend the bulk of their cash on stock buybacks and dividends. Gradually, this cash use is shifting to M&A – a classic ‘top of the cycle’ indicator – although courtesy of the unprecedented bubble in various sectors, tech most notably, corporations are opting to chiefly use overvalued stock as the currency of acquisition (see the recent purchase of Whatsapp by Facebook, funded mostly through FB stock) instead of cash. As we further explained at the same time, the main reason for this capital misallocation was simple: the Federal Reserve, whose ZIRP policy has perverted traditional hurdle rate-based capital allocation decisions, and has unleashed an all out buyback bonanza at the expense of the one cash use that is so critical to sustain not only revenue, but economic growth: capital expenditures.

As happens at the end of every year, sellside analysts and economists, all predicted that this year would be different, and the long overdue capex spending would finally be unleashed. Apparently they had far greater visibility on this matter, than on the topic of snowfall in the winter, and its disastrous impact on a $17 trillion economy, whose Q1 GDP growth forecast has cratered from 3% at the start of the year, to barely half that number currently. One of the firms that preached that the CapEx recovery is imminent is none other than Goldman Sachs, the same firm that also year after year predicts a new golden age for the US, only to see its forecast crash and burn some 4-6 months later, couched in the tried (or is that now trite) and true scapegoatings: snow, unrest in Europe, inflation or deflation in Japan, the usual. However, this time may indeed be different, and the same Goldman has just released a piece wondering “Why no capex recovery?” (despite the firm’s own forecasts to the contrary -just recall David Mericle’s “Capex: The Fundamentals Remain Strong” which now in retrospect is completely wrong).

What follows is a whole new set of “explanations” for why – once again – Goldman will have been wrong in its optimism, and why once again, we were right, after simply, and accurately, putting the blame for all that is currently wrong in the world on the one place that deserves such blame: the Federal Reserve.

Anyway, here is Goldman’s Aaron Ibbotson with Why No Capex Recovery?

Economic recovery should equal a capex recovery; that is indeed one of the key defining characteristics of the recovery phase of a business cycle. Yet we believe that “this time will be different”, certainly for developed market-based companies. Why? A combination of structural, cyclical and technological changes suggest to us that the need for capex will be lower going forward, one of the key reasons why we are cautious on capital goods.

Things are getting smaller, faster, lighter…

Ceteris paribus you need a big machine to make a big and heavy widget and a small machine to make a small and light widget; and a big machine generally demands a bigger investment than a small one. This may seem trivial, but as miniaturisation gathers pace you need less powerful motors, less space, a smaller truck to transport it around, less material to build it and much more – all with negative implications across the capex chain. In conjunction with miniaturisation machines are getting faster. A robot today can make more widgets than it could yesterday.

…until they disappear all together

The lightest and smallest widgets of them all are the ones that are now entirely virtual. As recently as the last up-cycle in 2003-2006, some companies invested capex building plants that made CDs, DVDs, video games, sat navs, maps, time tables and much more, that we now largely use our smartphones/tablets for. While capex will continue to be invested to produce our smart phones/tablets, it is difficult to envisage how it will compensate for the increasing number of goods that are becoming virtual.

Capex will be spent elsewhere…in Asia

While all capex counts, the capex we typically focus on is the that spent by listed companies in general, and listed DM companies in particular. However, the global supply chain looks very different today than it did only 10 year ago. Everything from electric components to steel is being sourced from non-DM companies, often not listed, and many of them based in China and other parts of Asia. This trend is particularly strong within tech, where Asian companies dominate the capex-intensive part of the value chain. However, myriad small Asian companies play an important part in the supply chain of many non-tech DM companies. And often, the part of the value chain that is being outsourced is the most capex-intensive part, such as producing raw materials or semiconductors, reducing both the cyclicality and the need for capex by DM-listed companies.

…and by states and private companies

The Chinese State Grid Corporation spent c.US$60 bn in 2012 and China Railway Corporation spent over US$100 bn. To put this into context, the 2,200 European non-resource companies GS covers spent in aggregate €250 bn. Over the last decade, FAI has increased by a factor of 2.5x in EMs while it has increased by only 10% in DMs. This has increased the proportion of capex spent by SOEs in a number of industries such as resources, transport and power generation and T&D. All capex counts, but this capex will not show up in the cash flow statements of the companies in our coverage, and we expect a declining slice to show up in the P&Ls of our capital goods coverage.

Too much was spent in the last up-cycle

The last cycle saw many booming end-markets: mining, power generation, shipping, O&G and Chinese construction among many growing 3x+. We do not expect this up-cycle to contain any booms, and see several of the preceding end-markets continuing (or entering) multi-year declines. At the core of our view is the long asset life of many of the capital goods sold into the booming end-markets of the last decade. This lends itself to multi-decade investment cycles. The 20-year decline in transmission and power generation capex in the US (early 1970s to late 1990s) provides a sobering example. We now believe that several end-markets are close to, or past, their peak. Of the five mentioned above, it is only O&G where we still expect growth, albeit at a substantially lower level.


    



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Citi Warns “Housing Sentiment Got Carried Away”

The divergence between the NAHB index and other housing indicators has continued to suggest that sentiment was “getting ahead of itself" and as Citi's Tom Fitzpatrick warns would suggest that the qualitative nature of the overall housing recovery is less robust than one would like.  Housing should pause/consolidate possibly even for most of this year as the weather argument that is trotted out by so many commentators does not seem to hold up to even a basic examination with the worst data coming from the West Coast. Simply put, Citi warns, we think housing sentiment got carried away as it did into 1994 and 1998 post the housing/savings and loan crisis of 1989-1991.

Via Citi FX Technicals
Techamentals – Housing Data Doing What Was Expected

The surge higher in yields seen last year along with elevated oil prices, some EM stress, and Fiscal drag seem to finally having their effect.

The weather argument that is trotted out by so many commentators does not seem to hold up to even a basic examination with the worst data coming from the West Coast (Maybe that 70 degree heat was just too much for them)

The chart below has constantly argued that housing should pause/consolidate, possibly even for most of this year before likely thereafter showing some traction again.

NAHB index; Building permits; New home sales; Housing starts

As we saw after the housing/savings and loan crisis in 1989-1991 housing sentiment (NAHB) rose much quicker that actual activity (Permits, New Home Sales and Housing starts)

We saw this in 2 periods in particular

  • Into late November 1993 before the 13 month surge in 10 year yields (287 basis points) as Alan Greenspan “tinkered” by raising interest rates by 25 basis points in Feb. 1994.
  • Into December 1998 before the EM crisis, Russian default, LTCM failure also became a drag on sentiment.

Once sentiment corrected and converged to “reality” we saw housing recover again. That took about 12-18 months in the periods in question.

We would therefore not be at all surprised if housing continues to consolidate/correct for most of 2014 before once again resuming its gradual rise higher again.

What would a path like 1993-1995 suggest?

A move lower in the NAHB index into the start of the 4th quarter to a level around 27 before resuming its rise would fit with what we saw in 1993-1995.

Mortgage Bankers association purchase index

This shows mortgage loan applications submitted to lenders and shows that we are almost back to the low levels seen in August 2011

The peak here (not surprisingly) was seen in April 2013 before we saw a surge in mortgage rates between May and July

In early May 2013, 30 year mortgage rates were around 3.40% and then surged by July to 4.64% (36% higher). Today they still remain elevated to last year (Albeit off the highs) at 4.32%

This area between 156.80 and 159.30 above (76.4% pullback of the 1990-2004 rise and horizontal supports from 1996 and 2011) is big support. If that were to give way then a move back towards the lows set in late 1990 at 53.50 would be a danger.

What this really shows is that a lot of housing activity has not been the traditional taking out of mortgages to buy a home but rather cash purchases; buy to rent; distressed purchases etc. This would suggest that the qualitative nature of the overall housing recovery is less robust than one would like.

Housing affordability: Small bounce but still 18% off the levels seen in March 2013

Rising mortgage rates being the prime culprit of course

So to improve affordability and get housing moving again we are going to need to see lower mortgage rates. How does that look?

US 10 year yield weekly chart: Lower yields in the months ahead remains our base case

Last month we saw an outside month in the 10 year yield (not shown) that suggests lower yields can be seen.(Traded to the high of the trend at 3.05% then fell below the December 2012 low of 2.75% and closed in January below that level at 2.64%). We also saw an outside month on the 30 year yield with the close below 3.74%

Going back to the chart above we look to have a clear Double top potential with a neckline at 2.47%. A close below there if seen would suggest the potential to go as low as 1.90-1.95% again. In addition to the neckline we see significant horizontal trend line support as well as the 55 and 200 week moving averages converging in the 2.40-2.44% range. So bottom line we continue to expect a test of this support area at 2.39-2.47% at a minimum. A weekly close below here, if seen, would suggest extended losses that could take us below 2%.

On the 30 year yield chart the picture is similar with significant support in the 3.48-3.56% area. A weekly close below there would suggest extended losses towards 3.15-3.20%

Overlay of US 10 year yield chart and 30 year mortgage rate.

A move towards the initial support area around 2.40-2.47% on 10 year yields would suggest a drop in the mortgage rate to at least 4.05-4.15% from the present 4.31% while a completion of the double top and a move below 2% would suggest mortgage rates back towards 3.65% at least.

It is feasible the move in mortgages could be even more if the spread were also to narrow as we moved lower.

US 30 year mortgage rate minus 10 year yield

Testing rising trend line support coming from 2007 around 152 basis points. A break below here would suggest further narrowing in this spread which if coming in a downward moving yield environment would go some way towards improving housing affordability again

Summary: We think housing sentiment got carried away as it did into 1994 and 1998 post the housing/savings and loan crisis of 1989-1991.

The surge in yields since last May was “too far too fast”. Add to that the fiscal drag, elevated oil prices and maybe even the weather (as A factor not THE factor) and you get a pause in housing and a fall in sentiment like we did in 1994 and 1998. With sluggish economic data materializing, yields and ultimately mortgage rates will adjust lower (without the need for additional Fed interference) as the bond market “clears” all on its own. This will be simulative and by as early as end 2014 housing will likely pick up once again.
 


    



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