Crude’s Worst Day In 13 Months Sends Trannies Tumbling

WTI crude is back below $95.50 – its lowest in a month – as the price of the front-month has dropped over 3% today – its biggest single-day drop since November 2012. USD strength (+0.3%) is being ignored for now by gold and silver which are jumping handily (back over $1230 and $20 respectively). US equities are suffering for the first day of the year for the first time since 2008 (which ended -38.5%) led by Russell 2000 and the Dow Transports – which is seeing its worst day in 4 months.

 

Oil is having a bad day – and its not a WTI-Brent issue as the spread is stable…

 

and the Trannies are tumbling…

 

Along with all the other major indices… from Friday’s panic-buying highs

 

Charts: Bloomberg

Thursday Humor Bonus Chart: We can only assume that Bloomberg did not get the memo on the 100-to-1 reverse split rescaling of Venzuela’s stock index… or it really is -99.9%…



    



via Zero Hedge http://feedproxy.google.com/~r/zerohedge/feed/~3/rN4pCt86cho/story01.htm Tyler Durden

No, Obamacare Won’t Reduce Emergency Room Usage

Supporters of Obamacare have long pitched the law
as a way to address emergency room crowding caused by lack of
health coverage. Individuals without health coverage, the thinking
goes, have no place to turn when they need medical attention, and
as a result they head to the emergency room. That creates crowding,
which can strain medical resources. It’s also more expensive than
an ordinary trip to the doctor. The theory was that by giving
people insurance, Obamacare could mitigate this problem, allowing
more people to skip emergency care facilities by relying on less
crowded, less expensive doctors offices instead.

President Obama pitched a version of this idea in
a speech last September
, arguing that emergency room visits by
the uninsured represented a hidden tax on everyone else. “When
uninsured people who can afford to get health insurance don’t, and
then they get sick or they get hit by a car, and they show up at
the emergency room, who do you think pays for that?” he asked.

But the best evidence has never really supported the hope that
the law would reduce emergency room usage. That’s because much of
the law’s expanded coverage comes via Medicaid, the jointly run
federal-state program for the low income and disabled. And Medicaid
beneficiaries tend to visit the emergency room more often than the
uninsured.

A new study of Medicaid beneficiaries in Oregon makes a strong
version of this case. The study, published today in the journal
Science, finds that adult Medicaid beneficiaries rely on
emergency rooms about 40 percent more than similar uninsured
adults.

“When you cover the uninsured, emergency room use goes up by a
large magnitude,” said Amy Finkelstein, a health economist at
the Massachusetts Institute of Technology who served as a lead
investigator on the study, in an MIT press statement accompanying
the study.

There were no exceptions to the trend. “In no case were we able
to find any subpopulations, or type of conditions, for which
Medicaid caused a significant decrease in emergency department
use,” said Finkelstein.

We’ve seen real-world evidence that Medicaid increases emergency
room utilization before, in states like
California
. But the Oregon study should settle any lingering
debate. That’s because it was based on a randomized controlled
trial (RCT), in which a cohort of uninsured were selected by
lottery to receive Medicaid, and then compared against a control
group of individuals who did not get coverage through the lottery.
Randomized selection allows researchers to weed out potential
selection effects that can be found in other types of studies; RCTs
are considered the gold standard in social science research design.
This was the first randomized study of Medicaid’s effect on
emergency room usage.

The new study follows up on earlier published findings from the
same group of Medicaid lottery winners in Oregon. Overall, the
results suggest that Medicaid’s real benefits are fairly slim.

Beneficiaries report that they feel better after
they are covered, and they are much less likely to be subject to
large, health-related financial shocks. But the study also found
that, even though utilization of health services—and thus health
spending—increased for individuals with Medicaid coverage, there
was no corresponding improvement in
objective physical health measures
.

Which means that Medicaid is mostly a way of insulating
beneficiaries from financial shock, at the cost of more crowded
emergency rooms and greater utilization of health care
resources.

It’s not so much a health program as a financial buffer—and a
costly one at that.

These findings ought to spark a rethinking of Medicaid’s value
and effectiveness. It’s not enough to provide some positive
benefit. It’s also important to ask whether there are other,
better, less expensive and resource-intensive ways of achieving the
same goal. If Medicaid is to be a financial smoothing program
rather than a health-improvement program, then we ought to treat it
like one, and make reforms accordingly.

from Hit & Run http://reason.com/blog/2014/01/02/no-obamacare-wont-reduce-emergency-room
via IFTTT

Alan Greenspan's Modest Proposal: Fix Broken Economic Models By… Modeling Irrational "Animal Spirits"

Ten days ago, we showed that sometimes even the great maestro is powerless to fight deflation, particularly when it comes to the prevailing equilibrium price of his just released book “The Map And The Territory” where it seems there is a bit more supply than demand.

So when even cutting prices doesn’t work what is a former Fed chairman, his ramblings roundly ignored by everyone when it was freely dispensed, and certainly now, when one has to pay for it, to do? Why condense the entire book in an essay and publish it for free in the Council of Foreign Relations Foreign Affairs website, of course.

But while we leave it to everyone’s supreme amusement to enjoy the Maestro’s full non-mea culpa essay, we will highlight Greenspan’s two most amusing incosistencies contained in the span of a few hundred words.

On one hand the former Chairman admits that “The financial crisis […] represented an existential crisis for economic forecasting. The conventional method of predicting macroeconomic developments — econometric modeling, the roots of which lie in the work of John Maynard Keynes — had failed when it was needed most, much to the chagrin of economists.

On the other, his solution is to do… more of the same: “if economists better integrate animal spirits into our models, we can improve our forecasting accuracy. Economic models should, when possible, measure and forecast systematic human behavior and the tendencies of corporate culture…. Forecasters may never approach the fantasy success of the Oracle of Delphi or Nostradamus, but we can surely improve on the discouraging performance of the past.”

So, Greenspan’s solution to the failure of linear models is to… model animal spirits, or said otherwise human irrationality. Brilliant.

It is good to know that at least the man who unleashed the biggest credit bubble on the world has learned from the lessons of the past three bubble burst. Oh wait. He has not learned one single thing.

And then some wonder why the general public no longer has any faith in either the economy or the markets: with central planners – full of hubris and lacking any ability to learn and process historical events – like this one, an epic crash, one that is bigger than all previous ones combined, is absolutely assured.

By Alan Greenspan, posted in Foreign Affairs

Never Saw It Coming

It was a call I never expected to receive. I had just returned home from playing indoor tennis on the chilly, windy Sunday afternoon of March 16, 2008. A senior official of the U.S. Federal Reserve Board of Governors was on the phone to discuss the board’s recent invocation, for the first time in decades, of the obscure but explosive Section 13(3) of the Federal Reserve Act. Broadly interpreted, that section empowered the Federal Reserve to lend nearly unlimited cash to virtually anybody: in this case, the Fed planned to loan nearly $29 billion to J.P. Morgan to facilitate the bank’s acquisition of the investment firm Bear Stearns, which was on the edge of bankruptcy, having run through nearly $20 billion of cash in the previous week.

The demise of Bear Stearns was the beginning of a six-month erosion in global financial stability that would culminate with the failure of Lehman Brothers on September 15, 2008, triggering possibly the greatest financial crisis in history. To be sure, the Great Depression of the 1930s involved a far greater collapse in economic activity. But never before had short-term financial markets, the facilitators of everyday commerce, shut down on a global scale. As investors swung from euphoria to fear, deeply liquid markets dried up overnight, leading to a worldwide contraction in economic activity.

The financial crisis that ensued represented an existential crisis for economic forecasting. The conventional method of predicting macroeconomic developments — econometric modeling, the roots of which lie in the work of John Maynard Keynes — had failed when it was needed most, much to the chagrin of economists. In the run-up to the crisis, the Federal Reserve Board’s sophisticated forecasting system did not foresee the major risks to the global economy. Nor did the model developed by the International Monetary Fund, which concluded as late as the spring of 2007 that “global economic risks [had] declined” since September 2006 and that “the overall U.S. economy is holding up well . . . [and] the signs elsewhere are very encouraging.” On September 12, 2008, just three days before the crisis began, J.P. Morgan, arguably the United States’ premier financial institution, projected that the U.S. GDP growth rate would accelerate during the first half of 2009. The pre-crisis view of most professional analysts and forecasters was perhaps best summed up in December 2006 by The Economist: “Market capitalism, the engine that runs most of the world economy, seems to be doing its job well.”

What went wrong? Why was virtually every economist and policymaker of note so blind to the coming calamity? How did so many experts, including me, fail to see it approaching? I have come to see that an important part of the answers to those questions is a very old idea: “animal spirits,” the term Keynes famously coined in 1936 to refer to “a spontaneous urge to action rather than inaction.” Keynes was talking about an impulse that compels economic activity, but economists now use the term “animal spirits” to also refer to fears that stifle action. Keynes was hardly the first person to note the importance of irrational factors in economic decision-making, and economists surely did not lose sight of their significance in the decades that followed. The trouble is that such behavior is hard to measure and stubbornly resistant to any systematic analysis. For decades, most economists, including me, had concluded that irrational factors could not fit into any reliable method of forecasting.

Financial firms believed that if a crisis developed, the insatiable demand for exotic products would dissipate only slowly. They were mistaken.

But after several years of closely studying the manifestations of animal spirits during times of severe crisis, I have come to believe that people, especially during periods of extreme economic stress, act in ways that are more predictable than economists have traditionally understood. More important, such behavior can be measured and should be made an integral part of economic forecasting and economic policymaking. Spirits, it turns out, display consistencies that can help economists identify emerging price bubbles in equities, commodities, and exchange rates — and can even help them anticipate the economic consequences of those assets’ ultimate collapse and recovery.

(Ib Ohhlson)

SPIRITS IN THE MATERIAL WORLD

The economics of animal spirits, broadly speaking, covers a wide range of human actions and overlaps with much of the relatively new discipline of behavioral economics. The study aims to incorporate a more realistic version of behavior than the model of the wholly rational Homo economicus
used for so long. Evidence indicates that this more realistic view of the way people behave in their day-by-day activities in the marketplace traces a path of economic growth that is somewhat lower than would be the case if people were truly rational economic actors. If people acted at the level of rationality presumed in standard economics textbooks, the world’s standard of living would be measurably higher.

From the perspective of a forecaster, the issue is not whether behavior is rational but whether it is sufficiently repetitive and systematic to be numerically measured and predicted. The challenge is to better understand what Daniel Kahneman, a leading behavioral economist, refers to as “fast thinking”: the quick-reaction judgments on which people tend to base much, if not all, of their day-to-day decisions about financial markets. No one is immune to the emotions of fear and euphoria, which are among the predominant drivers of speculative markets. But people respond to fear and euphoria in different ways, and those responses create specific, observable patterns of thought and behavior.

Perhaps the animal spirit most crucial to forecasting is risk aversion. The process of choosing which risks to take and which to avoid determines the relative pricing structure of markets, which in turn guides the flow of savings into investment, the critical function of finance. Risk taking is essential to living, but the question is whether more risk taking is better than less. If it were, the demand for lower-quality bonds would exceed the demand for “risk-free” bonds, such as U.S. Treasury securities, and high-quality bonds would yield more than low-quality bonds. It is not, and they do not, from which one can infer the obvious: risk taking is necessary, but it is not something the vast majority of people actively seek.

The bounds of risk tolerance can best be measured by financial market yield spreads — that is, the difference between the yields of private-sector bonds and the yields of U.S. Treasuries. Such spreads exhibit surprisingly little change over time. The yield spreads between prime corporate bonds and U.S. Treasuries in the immediate post?Civil War years, for example, were similar to those for the years following World War II. This remarkable equivalence suggests long-term stability in the degree of risk aversion in the United States.

Another powerful animal spirit is time preference, the propensity to value more highly a claim to an asset today than a claim to that same asset at some fixed time in the future. A promise delivered tomorrow is not as valuable as that promise conveyed today. Investors experience this phenomenon mostly through its most visible counterparts: interest rates and savings rates. Like risk aversion, time preference has proved remarkably stable: indeed, in Greece in the fifth century BC, interest rates were at levels similar to those of today’s rates. From 1694 to 1972, the Bank of England’s official policy rate ranged from two to ten percent. It surged to 17 percent during the inflationary late 1970s, but it has since returned to single digits.

Time preference also affects people’s propensity to save. A strong preference for immediate consumption diminishes a person’s tendency to save, whereas a high preference for saving diminishes the propensity to consume. Through most of human history, time preference did not have a major determining role in the level of savings, because prior to the late nineteenth century, most people had to consume virtually all they produced simply to stay alive. There was little left over to save even if people were innately inclined to do so. It was only when the innovation and productivity growth of the Industrial Revolution freed people from the grip of chronic starvation that time preference emerged as a significant — and remarkably stable — economic force. Consider that although real household incomes have risen significantly since the late nineteenth century, average savings rates have not risen as a consequence. In fact, during periods of peace in the United States since 1897, personal savings as a share of disposable personal income have almost always stayed within a relatively narrow range of five to ten percent.

THE JESSEL PARADOX

In addition to the stable and predictable effects of time preference, another animal spirit is at work in these long-term trends: “conspicuous consumption,” as the economist Thorstein Veblen labeled it more than a century ago, a form of herd behavior captured by the more modern idiom “keeping up with the Joneses.” Saving and consumption reflect people’s efforts to maximize their happiness. But happiness depends far more on how people’s incomes compare with those of their perceived peers, or even those of their role models, than on how they are doing in absolute terms. In 1995, researchers asked a group of graduate students and staff members at the Harvard School of Public Health whether they would be happier earning $50,000 a year if their peers earned half that amount or $100,000 if their peers earned twice that amount; the majority chose the lower salary. That finding echoed the results of a fascinating 1947 study by the economists Dorothy Brady and Rose Friedman, demonstrating that the share of income an American family spent on consumer goods and services was largely determined not by its income but by how its income compared to the national average. Surveys indicate that a family with an average income in 2011 spent the same proportion of its income as a family with an average income in 1900, even though in inflation-adjusted terms, the 1900 income would represent only a minor fraction of the 2011 figure.

Such herd behavior also drives speculative booms and busts. When a herd commits to a bull market, the market becomes highly vulnerable to what I dub the Jessel Paradox, after the vaudeville comedian George Jessel. In one of his routines, Jessel told the story of a skeptical investor who reluctantly decides to invest in stocks. He starts by buying 100 shares of a rarely traded, fly-by-night company. Surprise, surprise — the price moves from $10 per share to $11 per share. Encouraged that he has become a wise investor, he buys more. Finally, when his own purchases have managed to bid the price up to $30 per share, he decides to cash in. He calls his broker to sell out his position. The broker hesitates and then responds, “To whom?”

Classic market bubbles take shape when herd behavior induces almost every investor to act like the one in Jessel’s joke. Bears become bulls, propelling prices ever higher. In the archetypal case, at the top of the market, everyone has turned into a believer and is fully committed, leaving no unconverted skeptics left to buy from the first new seller.

That was, in essence, what happened in 2008. By the spring of 2007, yield spreads in debt markets had narrowed dramatically; the spread between “junk” bonds that were rated CCC or lower and ten-year U.S. Treasury notes had fallen to an exceptionally low level. Almost all market participants were aware of the growing risks, but they also knew that a bubble could keep expanding for years. Financial firms thus feared that should they retrench too soon, they would almost surely lose market share, perhaps irretrievably. In July 2007, the chair and CEO of Citigroup, Charles Prince, expressed that fear in a now-famous remark: “When the music stops, in terms of liquidity, things will be complicated. But as long as the music is playing, you’ve got to get up and dance. We’re still dancing.”

Financial firms accepted the risk that they would be unable to anticipate the onset of a crisis in time to retrench. However, they thought the risk was limited, believing that even if a crisis developed, the seemingly insatiable demand for exotic financial products would dissipate only slowly, allowing them to sell almost all their portfolios without loss. They were mistaken. They failed to recognize that market liquidity is largely a function of the degree of inves
tors’ risk aversion, the most dominant animal spirit that drives financial markets. Leading up to the onset of the crisis, the decreased risk aversion among investors had produced increasingly narrow credit yield spreads and heavy trading volumes, creating the appearance of liquidity and the illusion that firms could sell almost anything. But when fear-induced market retrenchment set in, that liquidity disappeared overnight, as buyers pulled back. In fact, in many markets, at the height of the crisis of 2008, bids virtually disappeared.

FAT TAILS ON THIN ICE

Financial firms could have protected themselves against the costs of their increased risk taking if they had remained adequately capitalized — if, in other words, they had prepared for a very rainy day. Regrettably, they had not, and the dangers that their lack of preparedness posed were not fully appreciated, even in the commercial banking sector. For example, in 2006, the Federal Deposit Insurance Corporation, speaking on behalf of all U.S. bank regulators, judged that “more than 99 percent of all insured institutions met or exceeded the requirements of the highest regulatory capital standards.”

What explains the failure of the large array of fail-safe buffers that were supposed to counter developing crises? Investors and economists believed that a sophisticated global system of financial risk management could contain market breakdowns. The risk-management paradigm that had its genesis in the work of such Nobel Prize–winning economists as Harry Markowitz, Robert Merton, and Myron Scholes was so thoroughly embraced by academia, central banks, and regulators that by 2006 it had become the core of the global bank regulatory standards known as Basel II. Global banks were authorized, within limits, to apply their own company-specific risk-based models to judge their capital requirements. Most of those models produced parameters based only on the last quarter century of observations. But even a sophisticated number-crunching model that covered the last five decades would not have anticipated the crisis that loomed.

Mathematical models that calibrate risk are nonetheless surely better guides to risk assessment than the “rule of thumb” judgments of a half century earlier. To this day, it is hard to find fault with the conceptual framework of such models, as far as they go. The elegant options-pricing model developed by Scholes and his late colleague Fischer Black is no less valid or useful today than when it was developed, in 1973. But in the growing state of euphoria in the years before the 2008 crash, private risk managers, the Federal Reserve, and other regulators failed to ensure that financial institutions were adequately capitalized, in part because we all failed to comprehend the underlying magnitude and full extent of the risks that were about to be revealed as the post-Lehman crisis played out. In particular, we failed to fully comprehend the size of the expansion of so-called tail risk.

“Tail risk” refers to the class of investment outcomes that occur with very low probabilities but that are accompanied by very large losses when they do materialize. Economists have assumed that if people acted solely to maximize their own self-interest, their actions would produce long-term growth paths consistent with their abilities to increase productivity. But because people lacked omniscience, the actual outcomes of their risk taking would reflect random deviations from long-term trends. And those deviations, with enough observations, would tend to be distributed in a manner similar to the outcomes of successive coin tosses, following what economists call a normal distribution: a bell curve with “tails” that rapidly taper off as the probability of occurrence diminishes.

Those assumptions have been tested in recent decades, as a number of once-in-a-lifetime phenomena have occurred with a frequency too high to credibly attribute to pure chance. The most vivid example is the wholly unprecedented stock-price crash on October 19, 1987, which propelled the Dow Jones Industrial Average down by more than 20 percent in a single day. No conventional graph of probability distribution would have predicted that crash. Accordingly, many economists began to speculate that the negative tail of financial risk was much “fatter” than had been assumed — in other words, the global financial system was far more vulnerable than most models showed.

In fact, as became clear in the wake of the Lehman collapse, the tail was morbidly obese. As a consequence of an underestimation of that risk, financial firms failed to anticipate the amount of additional capital that would be required to serve as an adequate buffer when the financial system was jolted.

MUGGED BY REALITY

The 2008 financial collapse has provided reams of new data on negative tail risk; the challenge will be to use the new data to develop a more realistic assessment of the range and probabilities of financial outcomes, with an emphasis on those that pose the greatest dangers to the financial system and the economy. One can hope that in a future financial crisis — and there will surely be one — economists, investors, and regulators will better understand how fat-tail markets work. Doing so will require better models, ones that more accurately reflect predictable aspects of human nature, including risk aversion, time preference, and herd behavior.

Forecasting will always be somewhat of a coin toss. But if economists better integrate animal spirits into our models, we can improve our forecasting accuracy. Economic models should, when possible, measure and forecast systematic human behavior and the tendencies of corporate culture. Modeling will always be constrained by a lack of relevant historical precedents. But analysts know a good deal more about how financial markets work — and fail — than we did before the 2008 crisis.

The halcyon days of the 1960s, when there was great optimism that econometric models offered new capabilities to accurately judge the future, are now long gone. Having been mugged too often by reality, forecasters now express less confidence about our abilities to look beyond the immediate horizon. We will forever need to reach beyond our equations to apply economic judgment. Forecasters may never approach the fantasy success of the Oracle of Delphi or Nostradamus, but we can surely improve on the discouraging performance of the past.


    



via Zero Hedge http://feedproxy.google.com/~r/zerohedge/feed/~3/LNR-2jUZ_9E/story01.htm Tyler Durden

Alan Greenspan’s Modest Proposal: Fix Broken Economic Models By… Modeling Irrational “Animal Spirits”

Ten days ago, we showed that sometimes even the great maestro is powerless to fight deflation, particularly when it comes to the prevailing equilibrium price of his just released book “The Map And The Territory” where it seems there is a bit more supply than demand.

So when even cutting prices doesn’t work what is a former Fed chairman, his ramblings roundly ignored by everyone when it was freely dispensed, and certainly now, when one has to pay for it, to do? Why condense the entire book in an essay and publish it for free in the Council of Foreign Relations Foreign Affairs website, of course.

But while we leave it to everyone’s supreme amusement to enjoy the Maestro’s full non-mea culpa essay, we will highlight Greenspan’s two most amusing incosistencies contained in the span of a few hundred words.

On one hand the former Chairman admits that “The financial crisis […] represented an existential crisis for economic forecasting. The conventional method of predicting macroeconomic developments — econometric modeling, the roots of which lie in the work of John Maynard Keynes — had failed when it was needed most, much to the chagrin of economists.

On the other, his solution is to do… more of the same: “if economists better integrate animal spirits into our models, we can improve our forecasting accuracy. Economic models should, when possible, measure and forecast systematic human behavior and the tendencies of corporate culture…. Forecasters may never approach the fantasy success of the Oracle of Delphi or Nostradamus, but we can surely improve on the discouraging performance of the past.”

So, Greenspan’s solution to the failure of linear models is to… model animal spirits, or said otherwise human irrationality. Brilliant.

It is good to know that at least the man who unleashed the biggest credit bubble on the world has learned from the lessons of the past three bubble burst. Oh wait. He has not learned one single thing.

And then some wonder why the general public no longer has any faith in either the economy or the markets: with central planners – full of hubris and lacking any ability to learn and process historical events – like this one, an epic crash, one that is bigger than all previous ones combined, is absolutely assured.

By Alan Greenspan, posted in Foreign Affairs

Never Saw It Coming

It was a call I never expected to receive. I had just returned home from playing indoor tennis on the chilly, windy Sunday afternoon of March 16, 2008. A senior official of the U.S. Federal Reserve Board of Governors was on the phone to discuss the board’s recent invocation, for the first time in decades, of the obscure but explosive Section 13(3) of the Federal Reserve Act. Broadly interpreted, that section empowered the Federal Reserve to lend nearly unlimited cash to virtually anybody: in this case, the Fed planned to loan nearly $29 billion to J.P. Morgan to facilitate the bank’s acquisition of the investment firm Bear Stearns, which was on the edge of bankruptcy, having run through nearly $20 billion of cash in the previous week.

The demise of Bear Stearns was the beginning of a six-month erosion in global financial stability that would culminate with the failure of Lehman Brothers on September 15, 2008, triggering possibly the greatest financial crisis in history. To be sure, the Great Depression of the 1930s involved a far greater collapse in economic activity. But never before had short-term financial markets, the facilitators of everyday commerce, shut down on a global scale. As investors swung from euphoria to fear, deeply liquid markets dried up overnight, leading to a worldwide contraction in economic activity.

The financial crisis that ensued represented an existential crisis for economic forecasting. The conventional method of predicting macroeconomic developments — econometric modeling, the roots of which lie in the work of John Maynard Keynes — had failed when it was needed most, much to the chagrin of economists. In the run-up to the crisis, the Federal Reserve Board’s sophisticated forecasting system did not foresee the major risks to the global economy. Nor did the model developed by the International Monetary Fund, which concluded as late as the spring of 2007 that “global economic risks [had] declined” since September 2006 and that “the overall U.S. economy is holding up well . . . [and] the signs elsewhere are very encouraging.” On September 12, 2008, just three days before the crisis began, J.P. Morgan, arguably the United States’ premier financial institution, projected that the U.S. GDP growth rate would accelerate during the first half of 2009. The pre-crisis view of most professional analysts and forecasters was perhaps best summed up in December 2006 by The Economist: “Market capitalism, the engine that runs most of the world economy, seems to be doing its job well.”

What went wrong? Why was virtually every economist and policymaker of note so blind to the coming calamity? How did so many experts, including me, fail to see it approaching? I have come to see that an important part of the answers to those questions is a very old idea: “animal spirits,” the term Keynes famously coined in 1936 to refer to “a spontaneous urge to action rather than inaction.” Keynes was talking about an impulse that compels economic activity, but economists now use the term “animal spirits” to also refer to fears that stifle action. Keynes was hardly the first person to note the importance of irrational factors in economic decision-making, and economists surely did not lose sight of their significance in the decades that followed. The trouble is that such behavior is hard to measure and stubbornly resistant to any systematic analysis. For decades, most economists, including me, had concluded that irrational factors could not fit into any reliable method of forecasting.

Financial firms believed that if a crisis developed, the insatiable demand for exotic products would dissipate only slowly. They were mistaken.

But after several years of closely studying the manifestations of animal spirits during times of severe crisis, I have come to believe that people, especially during periods of extreme economic stress, act in ways that are more predictable than economists have traditionally understood. More important, such behavior can be measured and should be made an integral part of economic forecasting and economic policymaking. Spirits, it turns out, display consistencies that can help economists identify emerging price bubbles in equities, commodities, and exchange rates — and can even help them anticipate the economic consequences of those assets’ ultimate collapse and recovery.

(Ib Ohhlson)

SPIRITS IN THE MATERIAL WORLD

The economics of animal spirits, broadly speaking, covers a wide range of human actions and overlaps with much of the relatively new discipline of behavioral economics. The study aims to incorporate a more realistic version of behavior than the model of the wholly rational Homo economicus used for so long. Evidence indicates that this more realistic view of the way people behave in their day-by-day activities in the marketplace traces a path of economic growth that is somewhat lower than would be the case if people were truly rational economic actors. If people acted at the level of rationality presumed in standard economics textbooks, the world’s standard of living would be measurably higher.

From the perspective of a forecaster, the issue is not whether behavior is rational but whether it is sufficiently repetitive and systematic to be numerically measured and predicted. The challenge is to better understand what Daniel Kahneman, a leading behavioral economist, refers to as “fast thinking”: the quick-reaction judgments on which people tend to base much, if not all, of their day-to-day decisions about financial markets. No one is immune to the emotions of fear and euphoria, which are among the predominant drivers of speculative markets. But people respond to fear and euphoria in different ways, and those responses create specific, observable patterns of thought and behavior.

Perhaps the animal spirit most crucial to forecasting is risk aversion. The process of choosing which risks to take and which to avoid determines the relative pricing structure of markets, which in turn guides the flow of savings into investment, the critical function of finance. Risk taking is essential to living, but the question is whether more risk taking is better than less. If it were, the demand for lower-quality bonds would exceed the demand for “risk-free” bonds, such as U.S. Treasury securities, and high-quality bonds would yield more than low-quality bonds. It is not, and they do not, from which one can infer the obvious: risk taking is necessary, but it is not something the vast majority of people actively seek.

The bounds of risk tolerance can best be measured by financial market yield spreads — that is, the difference between the yields of private-sector bonds and the yields of U.S. Treasuries. Such spreads exhibit surprisingly little change over time. The yield spreads between prime corporate bonds and U.S. Treasuries in the immediate post?Civil War years, for example, were similar to those for the years following World War II. This remarkable equivalence suggests long-term stability in the degree of risk aversion in the United States.

Another powerful animal spirit is time preference, the propensity to value more highly a claim to an asset today than a claim to that same asset at some fixed time in the future. A promise delivered tomorrow is not as valuable as that promise conveyed today. Investors experience this phenomenon mostly through its most visible counterparts: interest rates and savings rates. Like risk aversion, time preference has proved remarkably stable: indeed, in Greece in the fifth century BC, interest rates were at levels similar to those of today’s rates. From 1694 to 1972, the Bank of England’s official policy rate ranged from two to ten percent. It surged to 17 percent during the inflationary late 1970s, but it has since returned to single digits.

Time preference also affects people’s propensity to save. A strong preference for immediate consumption diminishes a person’s tendency to save, whereas a high preference for saving diminishes the propensity to consume. Through most of human history, time preference did not have a major determining role in the level of savings, because prior to the late nineteenth century, most people had to consume virtually all they produced simply to stay alive. There was little left over to save even if people were innately inclined to do so. It was only when the innovation and productivity growth of the Industrial Revolution freed people from the grip of chronic starvation that time preference emerged as a significant — and remarkably stable — economic force. Consider that although real household incomes have risen significantly since the late nineteenth century, average savings rates have not risen as a consequence. In fact, during periods of peace in the United States since 1897, personal savings as a share of disposable personal income have almost always stayed within a relatively narrow range of five to ten percent.

THE JESSEL PARADOX

In addition to the stable and predictable effects of time preference, another animal spirit is at work in these long-term trends: “conspicuous consumption,” as the economist Thorstein Veblen labeled it more than a century ago, a form of herd behavior captured by the more modern idiom “keeping up with the Joneses.” Saving and consumption reflect people’s efforts to maximize their happiness. But happiness depends far more on how people’s incomes compare with those of their perceived peers, or even those of their role models, than on how they are doing in absolute terms. In 1995, researchers asked a group of graduate students and staff members at the Harvard School of Public Health whether they would be happier earning $50,000 a year if their peers earned half that amount or $100,000 if their peers earned twice that amount; the majority chose the lower salary. That finding echoed the results of a fascinating 1947 study by the economists Dorothy Brady and Rose Friedman, demonstrating that the share of income an American family spent on consumer goods and services was largely determined not by its income but by how its income compared to the national average. Surveys indicate that a family with an average income in 2011 spent the same proportion of its income as a family with an average income in 1900, even though in inflation-adjusted terms, the 1900 income would represent only a minor fraction of the 2011 figure.

Such herd behavior also drives speculative booms and busts. When a herd commits to a bull market, the market becomes highly vulnerable to what I dub the Jessel Paradox, after the vaudeville comedian George Jessel. In one of his routines, Jessel told the story of a skeptical investor who reluctantly decides to invest in stocks. He starts by buying 100 shares of a rarely traded, fly-by-night company. Surprise, surprise — the price moves from $10 per share to $11 per share. Encouraged that he has become a wise investor, he buys more. Finally, when his own purchases have managed to bid the price up to $30 per share, he decides to cash in. He calls his broker to sell out his position. The broker hesitates and then responds, “To whom?”

Classic market bubbles take shape when herd behavior induces almost every investor to act like the one in Jessel’s joke. Bears become bulls, propelling prices ever higher. In the archetypal case, at the top of the market, everyone has turned into a believer and is fully committed, leaving no unconverted skeptics left to buy from the first new seller.

That was, in essence, what happened in 2008. By the spring of 2007, yield spreads in debt markets had narrowed dramatically; the spread between “junk” bonds that were rated CCC or lower and ten-year U.S. Treasury notes had fallen to an exceptionally low level. Almost all market participants were aware of the growing risks, but they also knew that a bubble could keep expanding for years. Financial firms thus feared that should they retrench too soon, they would almost surely lose market share, perhaps irretrievably. In July 2007, the chair and CEO of Citigroup, Charles Prince, expressed that fear in a now-famous remark: “When the music stops, in terms of liquidity, things will be complicated. But as long as the music is playing, you’ve got to get up and dance. We’re still dancing.”

Financial firms accepted the risk that they would be unable to anticipate the onset of a crisis in time to retrench. However, they thought the risk was limited, believing that even if a crisis developed, the seemingly insatiable demand for exotic financial products would dissipate only slowly, allowing them to sell almost all their portfolios without loss. They were mistaken. They failed to recognize that market liquidity is largely a function of the degree of investors’ risk aversion, the most dominant animal spirit that drives financial markets. Leading up to the onset of the crisis, the decreased risk aversion among investors had produced increasingly narrow credit yield spreads and heavy trading volumes, creating the appearance of liquidity and the illusion that firms could sell almost anything. But when fear-induced market retrenchment set in, that liquidity disappeared overnight, as buyers pulled back. In fact, in many markets, at the height of the crisis of 2008, bids virtually disappeared.

FAT TAILS ON THIN ICE

Financial firms could have protected themselves against the costs of their increased risk taking if they had remained adequately capitalized — if, in other words, they had prepared for a very rainy day. Regrettably, they had not, and the dangers that their lack of preparedness posed were not fully appreciated, even in the commercial banking sector. For example, in 2006, the Federal Deposit Insurance Corporation, speaking on behalf of all U.S. bank regulators, judged that “more than 99 percent of all insured institutions met or exceeded the requirements of the highest regulatory capital standards.”

What explains the failure of the large array of fail-safe buffers that were supposed to counter developing crises? Investors and economists believed that a sophisticated global system of financial risk management could contain market breakdowns. The risk-management paradigm that had its genesis in the work of such Nobel Prize–winning economists as Harry Markowitz, Robert Merton, and Myron Scholes was so thoroughly embraced by academia, central banks, and regulators that by 2006 it had become the core of the global bank regulatory standards known as Basel II. Global banks were authorized, within limits, to apply their own company-specific risk-based models to judge their capital requirements. Most of those models produced parameters based only on the last quarter century of observations. But even a sophisticated number-crunching model that covered the last five decades would not have anticipated the crisis that loomed.

Mathematical models that calibrate risk are nonetheless surely better guides to risk assessment than the “rule of thumb” judgments of a half century earlier. To this day, it is hard to find fault with the conceptual framework of such models, as far as they go. The elegant options-pricing model developed by Scholes and his late colleague Fischer Black is no less valid or useful today than when it was developed, in 1973. But in the growing state of euphoria in the years before the 2008 crash, private risk managers, the Federal Reserve, and other regulators failed to ensure that financial institutions were adequately capitalized, in part because we all failed to comprehend the underlying magnitude and full extent of the risks that were about to be revealed as the post-Lehman crisis played out. In particular, we failed to fully comprehend the size of the expansion of so-called tail risk.

“Tail risk” refers to the class of investment outcomes that occur with very low probabilities but that are accompanied by very large losses when they do materialize. Economists have assumed that if people acted solely to maximize their own self-interest, their actions would produce long-term growth paths consistent with their abilities to increase productivity. But because people lacked omniscience, the actual outcomes of their risk taking would reflect random deviations from long-term trends. And those deviations, with enough observations, would tend to be distributed in a manner similar to the outcomes of successive coin tosses, following what economists call a normal distribution: a bell curve with “tails” that rapidly taper off as the probability of occurrence diminishes.

Those assumptions have been tested in recent decades, as a number of once-in-a-lifetime phenomena have occurred with a frequency too high to credibly attribute to pure chance. The most vivid example is the wholly unprecedented stock-price crash on October 19, 1987, which propelled the Dow Jones Industrial Average down by more than 20 percent in a single day. No conventional graph of probability distribution would have predicted that crash. Accordingly, many economists began to speculate that the negative tail of financial risk was much “fatter” than had been assumed — in other words, the global financial system was far more vulnerable than most models showed.

In fact, as became clear in the wake of the Lehman collapse, the tail was morbidly obese. As a consequence of an underestimation of that risk, financial firms failed to anticipate the amount of additional capital that would be required to serve as an adequate buffer when the financial system was jolted.

MUGGED BY REALITY

The 2008 financial collapse has provided reams of new data on negative tail risk; the challenge will be to use the new data to develop a more realistic assessment of the range and probabilities of financial outcomes, with an emphasis on those that pose the greatest dangers to the financial system and the economy. One can hope that in a future financial crisis — and there will surely be one — economists, investors, and regulators will better understand how fat-tail markets work. Doing so will require better models, ones that more accurately reflect predictable aspects of human nature, including risk aversion, time preference, and herd behavior.

Forecasting will always be somewhat of a coin toss. But if economists better integrate animal spirits into our models, we can improve our forecasting accuracy. Economic models should, when possible, measure and forecast systematic human behavior and the tendencies of corporate culture. Modeling will always be constrained by a lack of relevant historical precedents. But analysts know a good deal more about how financial markets work — and fail — than we did before the 2008 crisis.

The halcyon days of the 1960s, when there was great optimism that econometric models offered new capabilities to accurately judge the future, are now long gone. Having been mugged too often by reality, forecasters now express less confidence about our abilities to look beyond the immediate horizon. We will forever need to reach beyond our equations to apply economic judgment. Forecasters may never approach the fantasy success of the Oracle of Delphi or Nostradamus, but we can surely improve on the discouraging performance of the past.


    



via Zero Hedge http://feedproxy.google.com/~r/zerohedge/feed/~3/LNR-2jUZ_9E/story01.htm Tyler Durden

Taxes, Inflation, And Now The Military: Turkish Stocks & Currency Re-Tumble

With tensions remaining high, the brouhaha over the ‘probe’ of government corruption daring to find actual corruption rolls on and now the military is complaining of bent judges in their own ‘coup’ trial:

  • *TURKISH ARMY SAYS EVIDENCE FABRICATED IN COUP TRIAL: HURRIYET
  • *TURKEY ARMED FORCES FILES CASE CITING PLOT AGAINST IT: HURRIYET

Add to this the hike in consumption taxes and fears over inflationary surges and the Lira has re-collapsed back to record lows against the USD and Istanbul stocks are re-tumbling.

 

 

The Military involvement (via Bloomberg),

Turkey’s Armed Forces asked the prosecutor’s office to open a case against what it said was a plot targeting it in trials of retired and active duty officers for alleged coup planning, Hurriyet newspaper says, citing a defense lawyer in one of the coup plot cases, Haluk Peksen.

 

Evidence against members was fabricated to target the Turkish Armed Forces: Hurriyet

 

Security officials, judges and prosecutors ignored defense of members and manipulated evidence: Hurriyet

 

Hundreds of military officers, including top generals, have been convicted in a series of cases on charges of plotting to overthrow PM Recep Tayyip Erdogan’s govt

 

On Inflation and Tax Hikes (via Goldman),

The government hiked various consumption taxes and surcharges on tobacco and alcoholic products, cars and mobile phones, effective from January 2.

 

We calculate that these tax hikes will add roughly 1.0pp to headline CPI, eradicating almost entirely the favourable base effect (roughly 1pp) set by last year’s administered price and tax hikes. This means headline CPI will be stuck at around the 7.5%-8% range through 2014Q1.

 

Sustained FX pass-through, pent-up electricity and natural gas price adjustments and possible unprocessed food price shocks (owing to unseasonably warm weather conditions) will likely continue to exert upside pressure on headline (and core) CPI. We continue to see end-2014 CPI at 8.3%, well above the 6.7% consensus. However, the risks to our forecasts remain on the upside.

 

We continue to expect the CBRT to hike (the policy relevant) O/N non-PD lending rate by 225bps to 10% in 2014. More aggressive rate hikes will probably be necessary to anchor inflation expectations, given the large imbalances undermining the TRY.

BofAML also believes the bullish trend in USDTRY is set to continue…


    



via Zero Hedge http://feedproxy.google.com/~r/zerohedge/feed/~3/e2LFmiGoZ1k/story01.htm Tyler Durden

Taxes, Inflation, And Now The Military: Turkish Stocks & Currency Re-Tumble

With tensions remaining high, the brouhaha over the ‘probe’ of government corruption daring to find actual corruption rolls on and now the military is complaining of bent judges in their own ‘coup’ trial:

  • *TURKISH ARMY SAYS EVIDENCE FABRICATED IN COUP TRIAL: HURRIYET
  • *TURKEY ARMED FORCES FILES CASE CITING PLOT AGAINST IT: HURRIYET

Add to this the hike in consumption taxes and fears over inflationary surges and the Lira has re-collapsed back to record lows against the USD and Istanbul stocks are re-tumbling.

 

 

The Military involvement (via Bloomberg),

Turkey’s Armed Forces asked the prosecutor’s office to open a case against what it said was a plot targeting it in trials of retired and active duty officers for alleged coup planning, Hurriyet newspaper says, citing a defense lawyer in one of the coup plot cases, Haluk Peksen.

 

Evidence against members was fabricated to target the Turkish Armed Forces: Hurriyet

 

Security officials, judges and prosecutors ignored defense of members and manipulated evidence: Hurriyet

 

Hundreds of military officers, including top generals, have been convicted in a series of cases on charges of plotting to overthrow PM Recep Tayyip Erdogan’s govt

 

On Inflation and Tax Hikes (via Goldman),

The government hiked various consumption taxes and surcharges on tobacco and alcoholic products, cars and mobile phones, effective from January 2.

 

We calculate that these tax hikes will add roughly 1.0pp to headline CPI, eradicating almost entirely the favourable base effect (roughly 1pp) set by last year’s administered price and tax hikes. This means headline CPI will be stuck at around the 7.5%-8% range through 2014Q1.

 

Sustained FX pass-through, pent-up electricity and natural gas price adjustments and possible unprocessed food price shocks (owing to unseasonably warm weather conditions) will likely continue to exert upside pressure on headline (and core) CPI. We continue to see end-2014 CPI at 8.3%, well above the 6.7% consensus. However, the risks to our forecasts remain on the upside.

 

We continue to expect the CBRT to hike (the policy relevant) O/N non-PD lending rate by 225bps to 10% in 2014. More aggressive rate hikes will probably be necessary to anchor inflation expectations, given the large imbalances undermining the TRY.

BofAML also believes the bullish trend in USDTRY is set to continue…


    



via Zero Hedge http://feedproxy.google.com/~r/zerohedge/feed/~3/e2LFmiGoZ1k/story01.htm Tyler Durden

SAFE Act Decision Highlights Embarrassing Mistakes by Gun Controllers in a Hurry

A year ago New York legislators

approved
gun controls championed by Gov. Andrew Cuomo so
quickly that they did not have time to read the bill, let alone
debate it. Cuomo nevertheless
insisted
 that the Secure Ammunition and Firearms
Enforcement (SAFE) Act “was not hastily put together.” The
embarrassing mistakes and omissions that prompted multiple
amendments during the year that followed Cuomo’s victory suggested
otherwise. So does this week’s
decision
by U.S. District Judge William Skretny, who
overturned
several provisions of the SAFE Act that reflect the
unseemly haste with which the law was enacted.

Responding to a challenge by various gun rights group, Skretny
agreed that three parts of the SAFE Act are unconstitutionally
vague. One of them bans semiautomatic rifles with “muzzle breaks,”
a heretofore undiscovered firearm feature:

When properly attached to a firearm, a muzzle brake reduces
recoil. The SAFE Act, however, regulates muzzle “breaks.” Although
New York contends that this is a simple oversight in drafting, and
that it intended to refer to muzzle “brakes,” it has provided no
evidence suggesting that this was the legislature’s intent….There
is no dispute that there is no accepted meaning to the term “muzzle
break.” Both sides agree that it is, quite simply, meaningless.
Consequently, an ordinary person cannot be “informed as to what the
State commands or forbids.” All references to muzzle “break” must
therefore be stricken.

Here is an even more puzzling provision of the law, with the
challenged language in italics:

It shall be unlawful for a person to knowingly possess a large
capacity ammunition feeding device manufactured before September
thirteenth, nineteen hundred ninety-four, and if such person
lawfully possessed such large capacity feeding device before the
effective date of the chapter of the laws of two thousand thirteen
which added this section, that has a capacity of, or that can be
readily restored or converted to accept, more than ten rounds of
ammunition.

Something seems to be missing, no? Skretny’s analysis:

Plaintiffs correctly note that the clause beginning with “and
if” is unintelligible. Although Defendants contend that this is
simply a “grammatical error” and the meaning of the provision, when
read as a whole, remains apparent despite the error, this Court
cannot agree. The error is more substantial than a mere mistake in
grammar. Rather, the “and if” clause is incomplete and entirely
indecipherable; in short, it requires an ordinary person to
“speculate as to” its meaning. This clause must therefore be
stricken as unconstitutionally vague.

Skretny also struck down a ban on semiautomatic pistols that are
“semiautomatic version[s] of an automatic rifle, shotgun or
firearm.” What does that mean? As Skretny points out, no one seems
to know:

An ordinary person cannot know whether any single semiautomatic
pistol is a “version” of an automatic one….The statute provides
no criteria to inform this determination, and, aside from the
largely irrelevant citations to case law, New York fails to point
to any evidence whatsoever that would lend meaning to this term.
Thus, it not only fails to provide fair warning, but also
“encourag[es] arbitrary and discriminatory enforcement.”
Section265.00(22)(c)(viii) must therefore be stricken as
unconstitutionally vague.

Even more embarrassing than these drafting errors is the most
substantive provision overturned by Skretny, which makes it a crime
to load more than seven rounds in a magazine. That
ridiculous rule
grew out of yet another misbegotten part of the
SAFE Act, which originally banned magazines capable of holding more
than seven rounds. After Cuomo
discovered
that the seven-round magazines mandated by his law
do not exist, he proposed letting people have 10-round magazines as
long as they don’t put more than seven rounds in them. The
legislature thought that was an eminently sensible idea. Skretny
disagrees:

New York fails to explain its decision to set the maximum at
seven rounds, which appears to be a largely arbitrary
number….

It stretches the bounds of this Court’s deference to the
predictive judgments of the legislature to suppose that those
intent on doing harm (whom, of course, the Act is aimed to stop)
will load their weapon with only the permitted seven rounds. In
this sense, the provision is not “substantially related” to the
important government interest in public safety and crime
prevention….This provision…presents the possibility of a
disturbing perverse effect, pitting the criminal with a fully
loaded magazine against the law-abiding citizen limited to seven
rounds….

The seven-round limit is largely an arbitrary restriction that
impermissibly infringes on the rights guaranteed by the Second
Amendment.

But if Skretny believes the seven-round rule violates the Second
Amendment, why did he uphold the SAFE Act’s equally arbitrary ban
on “assault weapons”? I will consider that question in a post later
today.  

from Hit & Run http://reason.com/blog/2014/01/02/safe-act-decision-highlights-embarrassin
via IFTTT

Guest Post: Pollution Threatens China's Food Security

Submitted by Shannon Tiezzi via The Diplomat,

A Reuters report this week noted that nearly 3.33 million hectares (eight million acres) of Chinese farmland are too polluted to grow crops. The article, which was re-posted by the state-run China Daily news site, quoted Wang Shiyuan, China’s vice minister of land and resources. Wang says that the government is determined to address the issue of polluted farmland, and will commit “tens of billions of yuan” each year to help return the land to a usable state.

Food security is a major concern for Chinese leaders, and worries over this issue already had the potential to severely slow down other planned reforms such as urbanization. The announcement on China’s pollution levels further complicates the balance of preserving farmland and speeding up urbanization. Wang Shiyuan noted that the amount of polluted land represents nearly 2 percent of the country’s arable land, which is not something the Chinese government can ignore.  China’s per capita arable land area is already less than half of the world average — the country simply can’t afford to lose any more land to pollution.

China’s government wants to ensure enough arable land is left reserved for farming, and the large swath of polluted fields cuts into that amount. Xinhua reports that China’s arable land survey counted about 135.4 million hectares (334.6 million acres) of farmland — but after removing from that count land reserved for “forest and pasture restoration” as well as land too polluted for crop-growing, the “actual available arable land was just slightly above the government’s red-line” of preserving 120 million hectares (296 million acres) of usable farm land. In other words, pollution is presenting a dangerous threat to one of the government’s highest priorities.

This presents a tough choice for Chinese leaders: let the land lie farrow and risk disrupting food supplies, or allow crops to be grown on tainted soil. Wang’s remarks show the government is leaning towards the former. Tainted crops have already caused scares among China’s citizens. A report by Guangzhou in May found that nearly half the rice in the cities’ restaurants had excessive levels of the heavy metal cadmium. The city’s residents were outraged when the report was published.  The rice in Guangzhou was linked to polluted plots in Hunan province, which produces 11 percent of China’s total rice each year. Caixin published an article arguing that cover-ups by both local and provincial governments allowed the problem to spread before it exploded into the public consciousness in late spring 2013.

In a way, Wang’s public report could actually be good news for environmental advocates.  For one, it shows that the central government is taking the problem seriously, and might be taking steps to increase transparency in the tracking and reporting of soil and water pollution. Even more importantly, food security is a non-negotiable for China’s government and pollution becoming a serious impediment to ensuring a steady supply of crops. Now China’s leaders will be more willing to make the hard choices necessary to clean up the land and water pollution in China’s rural areas. This might mean setting strict new pollution limits for businesses, or even closing down factories that operate close to farmland.

Unfortunately, however, the food security crisis could also negatively impact the environment. Chinadialogue reported back in November that the government was letting reforestation subsidies (money paid to farmers who plant trees on their land) expire over food security concerns. Wang’s remarks seem to promise that some land is being kept in reserve for reforestation and the creation of pasture land. If China’s arable land continues to creep down towards the “red line,” it will be very tempting for the government to reclaim this land for agriculture — which Chinadialogue argues will speed up desertification, putting China at risk in other ways.

 


    



via Zero Hedge http://feedproxy.google.com/~r/zerohedge/feed/~3/_Zr5XiHbDSk/story01.htm Tyler Durden