Monday, October 4, 2010

Fwd: [bangla-vision] The old Gaussian Copula trick - revisited : Recipe for Disaster: The Formula That Killed Wall Street/Did math formula cause financial crisis?



---------- Forwarded message ----------
From: Dick Eastman <oldickeastman@q.com>
Date: Mon, Oct 4, 2010 at 7:32 PM
Subject: [bangla-vision] The old Gaussian Copula trick - revisited : Recipe for Disaster: The Formula That Killed Wall Street/Did math formula cause financial crisis?
To:


 

The formula that did a number on you.
 
  Would you buy in a badly used sub-prime market if an equation said it was safe?
 
by Dick Eastman
 
  
All he wanted to do was produce an equation that would please his employer.
 
 
  Mathematical economist  David X Lee  --  his default correlation  equation that ignored controlling variables -- but it made him successful, until the consequences of ignoring analysis of  household sector economics and national purchasing power fundamentals caught up with everyone who would distill reality into a single statistic.
 
 
David X Lee provided a function for investment managers too lazy, ignorant or dishonest  to bother with fundamentals.  Instead of looking at the households and what is affecting their ability to make payments -- which would require a real economics of the household sector and of course it is taboo for outsiders to possess such an economics  --  so instead they just look at historical behavior of the variables and use econometrics to determine correlation by looking at past performance of similar households ignoring what was behind that performance  -- as if the price of swaptions is going to any better about the probability of a default, than knowing the ups and downs of a stock price is going to tell you whether the stock will rise or fall next week.  Predator Money Power speculators always use fundamentals and they prey on fools who do all their thinking by analyzing just the past performance of the outcome varialbes and ignoring the controlling variables that actually determine what the value of the outcome variable will be.
 
 
Securitize the sub-prime  -- credit sensitive assets --   yeilds high or low measures default correllation among credit sensitive assets --  meaning simply, the lazy stupids simply looked at default probabiliites of various sub-prime assets and ranked which sub-prime credit risks were likely to go down first.  Then as long as those more likley to go down have not gone down then, the strategy adopted says, it is safe to keep the asset that is unlikely to fail before the others.  Loans were packaged into boxes discriminating default probability -- credit rating -- with a higher default probability commanding a higher interest rate.  Then the thinking of the type -- "if the securitized mortgages with risk higher than the ones I am holding  are not defaulting then my loan investment must still be safe"   -- was reduced to a single number by the Gaussian copula function, telling the probability that both sets of assets will default simultaneously.
 
Defaults that may or may not occur have a certain probability that they will jointly occur.  But the determination that one bond has defaulted affects the probability that the remaining bonds will default -- the defaults are not independent, they are correlated with each other -- whether or not you know exactly how they are correlated.  Plug in the parameters of default probability for each sub-prime asset and some assets become the canary in the mineshaft telling you how safe your asset is (except that being in a mineshaft concavity, the canary sits on the intersections of convex from above normal distributions of default probability.    It is a great way to program a robot sheep to follow the herd.  If the old sickly sheep hasn't dropped over dead from eating in a field of bad weeds then you can still be safe in selling your stronger sheep at market at a good price.  If the old sickly sheep drops dead you must sell right away.  And that is what institutional investors did.
 
Say three people each flip a coin.  Probability of all three being heads is  .5 x .5 x .5 = .125    However if there is 100 percent correlation among the coins   -- say its really one person flipping and the other two are actually just images of the same coin in two mirrors  then the probability of all three being heads is .5.  Now if we are talking about defalut probabilities on different loans, and if you dare make assumptions about how defaluts are correlated -- which means how likely is family X to default on their mortgage payments and families A, B, C, D  etc all to default together.  Now the correlation map for that in multi-dimensional mathematical space all depends on whether mortgage defaults are independent of each other-- depending only on how good the borrower is at his job and how carefully the lending officer has inspected his ideographic credit characteristics  -- which would mean little correlation among defaults; or whether what happens to one is strongly correlated with what happens to another as when the same controlling events affect each in approximately the same way -- that is to say,  whether the variables determining default are macroeconomic and effect all lenders alike, causing very high correlation in defaults  -- as for example when everyone defaults at once because of a drainage of purchasing power in circulation and a huge spike in gasoline prices affects everyone's transportation costs and the ability of a large number of employers to meet payroll etc.   Of course the Money Power makes assumptions of the latter kind  -- they take their own manipulations into account  -- while the "outsider" invester (sheep to be fleeced) only look at the loans as ideographic and with little correlation -- using Lee's simplistic Gaussian Copula correlation functions as their canary on the mountain.
 
 -- if things have moved together or moved independently in the past it is important to know why they did so and it is even more important to know what potential very power controlling variables that have not been in play in the past may come into play affecting things in ways that just looking at past performance cannot take into consideration.  There is no substitution for fundamentals --  speculation with securitized loans does not lead to smooth and reliable coordination of investment by an infallible "invisible hand" of the market place.  The blind who follow the blind end up in the ditch.
 
Conclusion:  The rationale -- the usual excuse -- the reason for thinking it would work --  for investing in securitized mortgages turns out to have been seriously flawed.  The Gaussian Copula was justification for thinking betting on securitized mortgages could be comprehended and thus, if one positioned oneself right according to the number that the equation has distilled for you, highly profitiable for institutional investors.  In fact it was utterly incapable of delivering the set of numbered default risk "canaries" that one could count on in building an investment portfolio.  It was all bait to catch  suckers.  The real game was to lure these investors in with the false security given by Gauss's Copula and then slaughter them as the real players  -- the insider manipulators of the entire world economy -- arranged for deflation and high gas prices to percipitate the calculated collapse of the sub-prime markets, a collapse which they desinged to take down even the most credit worthy households at the time the loans were made.  This insider string-pulling elite were able to bet on the catastrophe they knew they would cause  -- and all of the assets of the suckers using Lee's formula ended up transferring with real wealth to the cats who ate the canary.
 
Dick Eastman
Yakima, Washington
 
==============
 
 
 

http://www.wired.com/techbiz/it/magazine/17-03/wp_quant?currentPage=all

Recipe for Disaster: The Formula That Killed Wall Street

By Felix Salmon 02.23.09
In the mid-'80s, Wall Street turned to the quants—brainy financial engineers—to invent new ways to boost profits. Their methods for minting money worked brilliantly... until one of them devastated the global economy.
Photo: Jim Krantz/Gallery Stock

A year ago, it was hardly unthinkable that a math wizard like David X. Li might someday earn a Nobel Prize. After all, financial economists—even Wall Street quants—have received the Nobel in economics before, and Li's work on measuring risk has had more impact, more quickly, than previous Nobel Prize-winning contributions to the field. Today, though, as dazed bankers, politicians, regulators, and investors survey the wreckage of the biggest financial meltdown since the Great Depression, Li is probably thankful he still has a job in finance at all. Not that his achievement should be dismissed. He took a notoriously tough nut—determining correlation, or how seemingly disparate events are related—and cracked it wide open with a simple and elegant mathematical formula, one that would become ubiquitous in finance worldwide.

For five years, Li's formula, known as a Gaussian copula function, looked like an unambiguously positive breakthrough, a piece of financial technology that allowed hugely complex risks to be modeled with more ease and accuracy than ever before. With his brilliant spark of mathematical legerdemain, Li made it possible for traders to sell vast quantities of new securities, expanding financial markets to unimaginable levels.

His method was adopted by everybody from bond investors and Wall Street banks to ratings agencies and regulators. And it became so deeply entrenched—and was making people so much money—that warnings about its limitations were largely ignored.

Then the model fell apart. Cracks started appearing early on, when financial markets began behaving in ways that users of Li's formula hadn't expected. The cracks became full-fledged canyons in 2008—when ruptures in the financial system's foundation swallowed up trillions of dollars and put the survival of the global banking system in serious peril.

David X. Li, it's safe to say, won't be getting that Nobel anytime soon. One result of the collapse has been the end of financial economics as something to be celebrated rather than feared. And Li's Gaussian copula formula will go down in history as instrumental in causing the unfathomable losses that brought the world financial system to its knees.

How could one formula pack such a devastating punch? The answer lies in the bond market, the multitrillion-dollar system that allows pension funds, insurance companies, and hedge funds to lend trillions of dollars to companies, countries, and home buyers.

A bond, of course, is just an IOU, a promise to pay back money with interest by certain dates. If a company—say, IBM—borrows money by issuing a bond, investors will look very closely over its accounts to make sure it has the wherewithal to repay them. The higher the perceived risk—and there's always some risk—the higher the interest rate the bond must carry.

Bond investors are very comfortable with the concept of probability. If there's a 1 percent chance of default but they get an extra two percentage points in interest, they're ahead of the game overall—like a casino, which is happy to lose big sums every so often in return for profits most of the time.

Bond investors also invest in pools of hundreds or even thousands of mortgages. The potential sums involved are staggering: Americans now owe more than $11 trillion on their homes. But mortgage pools are messier than most bonds. There's no guaranteed interest rate, since the amount of money homeowners collectively pay back every month is a function of how many have refinanced and how many have defaulted. There's certainly no fixed maturity date: Money shows up in irregular chunks as people pay down their mortgages at unpredictable times—for instance, when they decide to sell their house. And most problematic, there's no easy way to assign a single probability to the chance of default.

Wall Street solved many of these problems through a process called tranching, which divides a pool and allows for the creation of safe bonds with a risk-free triple-A credit rating. Investors in the first tranche, or slice, are first in line to be paid off. Those next in line might get only a double-A credit rating on their tranche of bonds but will be able to charge a higher interest rate for bearing the slightly higher chance of default. And so on.

The reason that ratings agencies and investors felt so safe with the triple-A tranches was that they believed there was no way hundreds of homeowners would all default on their loans at the same time. One person might lose his job, another might fall ill. But those are individual calamities that don't affect the mortgage pool much as a whole: Everybody else is still making their payments on time.

But not all calamities are individual, and tranching still hadn't solved all the problems of mortgage-pool risk. Some things, like falling house prices, affect a large number of people at once. If home values in your neighborhood decline and you lose some of your equity, there's a good chance your neighbors will lose theirs as well. If, as a result, you default on your mortgage, there's a higher probability they will default, too. That's called correlation—the degree to which one variable moves in line with another—and measuring it is an important part of determining how risky mortgage bonds are.

Investors like risk, as long as they can price it. What they hate is uncertainty—not knowing how big the risk is. As a result, bond investors and mortgage lenders desperately want to be able to measure, model, and price correlation. Before quantitative models came along, the only time investors were comfortable putting their money in mortgage pools was when there was no risk whatsoever—in other words, when the bonds were guaranteed implicitly by the federal government through Fannie Mae or Freddie Mac.

Yet during the '90s, as global markets expanded, there were trillions of new dollars waiting to be put to use lending to borrowers around the world—not just mortgage seekers but also corporations and car buyers and anybody running a balance on their credit card—if only investors could put a number on the correlations between them. The problem is excruciatingly hard, especially when you're talking about thousands of moving parts. Whoever solved it would earn the eternal gratitude of Wall Street and quite possibly the attention of the Nobel committee as well.

To understand the mathematics of correlation better, consider something simple, like a kid in an elementary school: Let's call her Alice. The probability that her parents will get divorced this year is about 5 percent, the risk of her getting head lice is about 5 percent, the chance of her seeing a teacher slip on a banana peel is about 5 percent, and the likelihood of her winning the class spelling bee is about 5 percent. If investors were trading securities based on the chances of those things happening only to Alice, they would all trade at more or less the same price.

But something important happens when we start looking at two kids rather than one—not just Alice but also the girl she sits next to, Britney. If Britney's parents get divorced, what are the chances that Alice's parents will get divorced, too? Still about 5 percent: The correlation there is close to zero. But if Britney gets head lice, the chance that Alice will get head lice is much higher, about 50 percent—which means the correlation is probably up in the 0.5 range. If Britney sees a teacher slip on a banana peel, what is the chance that Alice will see it, too? Very high indeed, since they sit next to each other: It could be as much as 95 percent, which means the correlation is close to 1. And if Britney wins the class spelling bee, the chance of Alice winning it is zero, which means the correlation is negative: -1.

If investors were trading securities based on the chances of these things happening to both Alice and Britney, the prices would be all over the place, because the correlations vary so much.

But it's a very inexact science. Just measuring those initial 5 percent probabilities involves collecting lots of disparate data points and subjecting them to all manner of statistical and error analysis. Trying to assess the conditional probabilities—the chance that Alice will get head lice if Britney gets head lice—is an order of magnitude harder, since those data points are much rarer. As a result of the scarcity of historical data, the errors there are likely to be much greater.

In the world of mortgages, it's harder still. What is the chance that any given home will decline in value? You can look at the past history of housing prices to give you an idea, but surely the nation's macroeconomic situation also plays an important role. And what is the chance that if a home in one state falls in value, a similar home in another state will fall in value as well?


Here's what killed your 401(k)   David X. Li's Gaussian copula function as first published in 2000. Investors exploited it as a quick—and fatally flawed—way to assess risk. A shorter version appears on this month's cover of Wired.

Probability

Specifically, this is a joint default probability—the likelihood that any two members of the pool (A and B) will both default. It's what investors are looking for, and the rest of the formula provides the answer.

Survival times

The amount of time between now and when A and B can be expected to default. Li took the idea from a concept in actuarial science that charts what happens to someone's life expectancy when their spouse dies.

Equality

A dangerously precise concept, since it leaves no room for error. Clean equations help both quants and their managers forget that the real world contains a surprising amount of uncertainty, fuzziness, and precariousness.

Copula

This couples (hence the Latinate term copula) the individual probabilities associated with A and B to come up with a single number. Errors here massively increase the risk of the whole equation blowing up.

Distribution functions

The probabilities of how long A and B are likely to survive. Since these are not certainties, they can be dangerous: Small miscalculations may leave you facing much more risk than the formula indicates.

Gamma

The all-powerful correlation parameter, which reduces correlation to a single constant—something that should be highly improbable, if not impossible. This is the magic number that made Li's copula function irresistible.



Enter Li, a star mathematician who grew up in rural China in the 1960s. He excelled in school and eventually got a master's degree in economics from Nankai University before leaving the country to get an MBA from Laval University in Quebec. That was followed by two more degrees: a master's in actuarial science and a PhD in statistics, both from Ontario's University of Waterloo. In 1997 he landed at Canadian Imperial Bank of Commerce, where his financial career began in earnest; he later moved to Barclays Capital and by 2004 was charged with rebuilding its quantitative analytics team.

Li's trajectory is typical of the quant era, which began in the mid-1980s. Academia could never compete with the enormous salaries that banks and hedge funds were offering. At the same time, legions of math and physics PhDs were required to create, price, and arbitrage Wall Street's ever more complex investment structures.

In 2000, while working at JPMorgan Chase, Li published a paper in The Journal of Fixed Income titled "On Default Correlation: A Copula Function Approach." (In statistics, a copula is used to couple the behavior of two or more variables.) Using some relatively simple math—by Wall Street standards, anyway—Li came up with an ingenious way to model default correlation without even looking at historical default data. Instead, he used market data about the prices of instruments known as credit default swaps.

If you're an investor, you have a choice these days: You can either lend directly to borrowers or sell investors credit default swaps, insurance against those same borrowers defaulting. Either way, you get a regular income stream—interest payments or insurance payments—and either way, if the borrower defaults, you lose a lot of money. The returns on both strategies are nearly identical, but because an unlimited number of credit default swaps can be sold against each borrower, the supply of swaps isn't constrained the way the supply of bonds is, so the CDS market managed to grow extremely rapidly. Though credit default swaps were relatively new when Li's paper came out, they soon became a bigger and more liquid market than the bonds on which they were based.

When the price of a credit default swap goes up, that indicates that default risk has risen. Li's breakthrough was that instead of waiting to assemble enough historical data about actual defaults, which are rare in the real world, he used historical prices from the CDS market. It's hard to build a historical model to predict Alice's or Britney's behavior, but anybody could see whether the price of credit default swaps on Britney tended to move in the same direction as that on Alice. If it did, then there was a strong correlation between Alice's and Britney's default risks, as priced by the market. Li wrote a model that used price rather than real-world default data as a shortcut (making an implicit assumption that financial markets in general, and CDS markets in particular, can price default risk correctly).

It was a brilliant simplification of an intractable problem. And Li didn't just radically dumb down the difficulty of working out correlations; he decided not to even bother trying to map and calculate all the nearly infinite relationships between the various loans that made up a pool. What happens when the number of pool members increases or when you mix negative correlations with positive ones? Never mind all that, he said. The only thing that matters is the final correlation number—one clean, simple, all-sufficient figure that sums up everything.

The effect on the securitization market was electric. Armed with Li's formula, Wall Street's quants saw a new world of possibilities. And the first thing they did was start creating a huge number of brand-new triple-A securities. Using Li's copula approach meant that ratings agencies like Moody's—or anybody wanting to model the risk of a tranche—no longer needed to puzzle over the underlying securities. All they needed was that correlation number, and out would come a rating telling them how safe or risky the tranche was.

As a result, just about anything could be bundled and turned into a triple-A bond—corporate bonds, bank loans, mortgage-backed securities, whatever you liked. The consequent pools were often known as collateralized debt obligations, or CDOs. You could tranche that pool and create a triple-A security even if none of the components were themselves triple-A. You could even take lower-rated tranches of other CDOs, put them in a pool, and tranche them—an instrument known as a CDO-squared, which at that point was so far removed from any actual underlying bond or loan or mortgage that no one really had a clue what it included. But it didn't matter. All you needed was Li's copula function.

The CDS and CDO markets grew together, feeding on each other. At the end of 2001, there was $920 billion in credit default swaps outstanding. By the end of 2007, that number had skyrocketed to more than $62 trillion. The CDO market, which stood at $275 billion in 2000, grew to $4.7 trillion by 2006.

At the heart of it all was Li's formula. When you talk to market participants, they use words like beautiful, simple, and, most commonly, tractable. It could be applied anywhere, for anything, and was quickly adopted not only by banks packaging new bonds but also by traders and hedge funds dreaming up complex trades between those bonds.

"The corporate CDO world relied almost exclusively on this copula-based correlation model," says Darrell Duffie, a Stanford University finance professor who served on Moody's Academic Advisory Research Committee. The Gaussian copula soon became such a universally accepted part of the world's financial vocabulary that brokers started quoting prices for bond tranches based on their correlations. "Correlation trading has spread through the psyche of the financial markets like a highly infectious thought virus," wrote derivatives guru Janet Tavakoli in 2006.

The damage was foreseeable and, in fact, foreseen. In 1998, before Li had even invented his copula function, Paul Wilmott wrote that "the correlations between financial quantities are notoriously unstable." Wilmott, a quantitative-finance consultant and lecturer, argued that no theory should be built on such unpredictable parameters. And he wasn't alone. During the boom years, everybody could reel off reasons why the Gaussian copula function wasn't perfect. Li's approach made no allowance for unpredictability: It assumed that correlation was a constant rather than something mercurial. Investment banks would regularly phone Stanford's Duffie and ask him to come in and talk to them about exactly what Li's copula was. Every time, he would warn them that it was not suitable for use in risk management or valuation.

In hindsight, ignoring those warnings looks foolhardy. But at the time, it was easy. Banks dismissed them, partly because the managers empowered to apply the brakes didn't understand the arguments between various arms of the quant universe. Besides, they were making too much money to stop.

In finance, you can never reduce risk outright; you can only try to set up a market in which people who don't want risk sell it to those who do. But in the CDO market, people used the Gaussian copula model to convince themselves they didn't have any risk at all, when in fact they just didn't have any risk 99 percent of the time. The other 1 percent of the time they blew up. Those explosions may have been rare, but they could destroy all previous gains, and then some.

Li's copula function was used to price hundreds of billions of dollars' worth of CDOs filled with mortgages. And because the copula function used CDS prices to calculate correlation, it was forced to confine itself to looking at the period of time when those credit default swaps had been in existence: less than a decade, a period when house prices soared. Naturally, default correlations were very low in those years. But when the mortgage boom ended abruptly and home values started falling across the country, correlations soared.

Bankers securitizing mortgages knew that their models were highly sensitive to house-price appreciation. If it ever turned negative on a national scale, a lot of bonds that had been rated triple-A, or risk-free, by copula-powered computer models would blow up. But no one was willing to stop the creation of CDOs, and the big investment banks happily kept on building more, drawing their correlation data from a period when real estate only went up.

"Everyone was pinning their hopes on house prices continuing to rise," says Kai Gilkes of the credit research firm CreditSights, who spent 10 years working at ratings agencies. "When they stopped rising, pretty much everyone was caught on the wrong side, because the sensitivity to house prices was huge. And there was just no getting around it. Why didn't rating agencies build in some cushion for this sensitivity to a house-price-depreciation scenario? Because if they had, they would have never rated a single mortgage-backed CDO."

Bankers should have noted that very small changes in their underlying assumptions could result in very large changes in the correlation number. They also should have noticed that the results they were seeing were much less volatile than they should have been—which implied that the risk was being moved elsewhere. Where had the risk gone?

They didn't know, or didn't ask. One reason was that the outputs came from "black box" computer models and were hard to subject to a commonsense smell test. Another was that the quants, who should have been more aware of the copula's weaknesses, weren't the ones making the big asset-allocation decisions. Their managers, who made the actual calls, lacked the math skills to understand what the models were doing or how they worked. They could, however, understand something as simple as a single correlation number. That was the problem.

"The relationship between two assets can never be captured by a single scalar quantity," Wilmott says. For instance, consider the share prices of two sneaker manufacturers: When the market for sneakers is growing, both companies do well and the correlation between them is high. But when one company gets a lot of celebrity endorsements and starts stealing market share from the other, the stock prices diverge and the correlation between them turns negative. And when the nation morphs into a land of flip-flop-wearing couch potatoes, both companies decline and the correlation becomes positive again. It's impossible to sum up such a history in one correlation number, but CDOs were invariably sold on the premise that correlation was more of a constant than a variable.

No one knew all of this better than David X. Li: "Very few people understand the essence of the model," he told The Wall Street Journal way back in fall 2005.

"Li can't be blamed," says Gilkes of CreditSights. After all, he just invented the model. Instead, we should blame the bankers who misinterpreted it. And even then, the real danger was created not because any given trader adopted it but because every trader did. In financial markets, everybody doing the same thing is the classic recipe for a bubble and inevitable bust.

Nassim Nicholas Taleb, hedge fund manager and author of The Black Swan, is particularly harsh when it comes to the copula. "People got very excited about the Gaussian copula because of its mathematical elegance, but the thing never worked," he says. "Co-association between securities is not measurable using correlation," because past history can never prepare you for that one day when everything goes south. "Anything that relies on correlation is charlatanism."

Li has been notably absent from the current debate over the causes of the crash. In fact, he is no longer even in the US. Last year, he moved to Beijing to head up the risk-management department of China International Capital Corporation. In a recent conversation, he seemed reluctant to discuss his paper and said he couldn't talk without permission from the PR department. In response to a subsequent request, CICC's press office sent an email saying that Li was no longer doing the kind of work he did in his previous job and, therefore, would not be speaking to the media.

In the world of finance, too many quants see only the numbers before them and forget about the concrete reality the figures are supposed to represent. They think they can model just a few years' worth of data and come up with probabilities for things that may happen only once every 10,000 years. Then people invest on the basis of those probabilities, without stopping to wonder whether the numbers make any sense at all.

As Li himself said of his own model: "The most dangerous part is when people believe everything coming out of it."

Felix Salmon (felix@felixsalmon.com) writes the Market Movers financial blog at Portfolio.com.

http://marketplace.publicradio.org/display/web/2009/02/24/pm_stock_formula_q/

TEXT OF INTERVIEW

KAI RYSSDAL: With Wall Street down to somewhere near half of where it was 18 months ago, there is an understandable temptation to try and figure out why. Inevitably that's a complicated question. And the answer's pretty complicated too.

The cover story in this month's Wired magazine suggests one possibility. A guy named David Li and a formula he came up with to help Wall Street figure out how risky one set of bonds might be as compared with another -- and what happens when those bonds default.

Felix Salmon wrote that article. He also sometimes helps us wrap up the week on Friday afternoons as well. Felix, good to talk to you.

FELIX SALMON: Good to talk to you, Kai.

RYSSDAL: This guy, David Li, what was he trying to do?

SALMON: What David Li was trying to do was look at lots of different bonds and try and work out whether they were all moving in the same direction or not. Whether they were correlated or not. Whether they were independent of each other or not. And he created this astonishing piece of mathematics called the Gaussian copula function, which sought to answer that very question.

RYSSDAL: What does that mean -- Gaussian copula? I mean, if I can just take a little sidebar here for a second.

SALMON: People get very scared when they hear the word Gaussian. But this is just one way of looking to see whether one set of probabilities is associated with another set of probabilities. The really key part of the Gaussian copula function is the copula bit. It's what's known as a multivariant copula. You can take lots of different bonds or stocks or any kind of securities you like, and you can throw them all into one big equation and out the end get a single number which is easily manipulable and trackable as they say in the world of quantitative finance.

RYSSDAL: It comes across in the article that this formula is a little bit like the Grand Unified Field Theory of financial economics. Once this guy figures out correlation between when bonds default and when they don't, well then Wall Street says, "Holy cow. We found it. We just have to look at this one simple thing and now we can trade a million different securities.

SALMON: Exactly. You can throw this formula at so many different problems and get this very elegant, simple number out the other end. And it made it far too easy for people to be able to just say, "Hey, we've solved this problem, and let's go away and start trading lots of money." And, eventually, what happens is that in their desire for things to trade, they end up buying huge amounts of debt, which they really shouldn't have been buying.

RYSSDAL: And they were buying it because this formula said: Well, this correlates to that, and everything should be fine.

SALMON: The slogan has it that in a crisis all correlations go to one -- it's something which no one really thought about during the good years.

RYSSDAL: That is to say, all those correlations going to one means everything moves together. And even bad things can move together.

SALMON: Especially, bad things move together. So, if you have one mortgage defaulting, then suddenly you have 100 mortgages defaulting. And even though you could cope quite happily with one or two mortgages defaulting, what you can't cope with is mortgages across the state and across the country all defaulting at the same time.

RYSSDAL: Alright, but let me ask you this, then, Felix. Here's this guy. He's a statistics PhD. He comes up with this formula. He thinks it works. Turns out, in reality, it has a fatal flaw. But is the fault his, or is the fault with the application that Wall Street did with it?

SALMON: The fault is really with Wall Street. The way you get bubbles on Wall Street is when everyone does the same thing at the same time. If no one used the formula, then it would have had no damage. If only a few people had used it, then they would have lost money. But the whole system would have been OK. The problem was the whole system started using the formula.

RYSSDAL: Obviously it's not David Li's fault that Wall Street took his formula and did all this crazy stuff with it. But do you get a sense at all that he wishes maybe he hadn't come up with it?

SALMON: I think he's built a really rather successful career on the back of this formula. And given that most people who know about it don't blame him personally for the meltdown of the global financial system, I think he's probably done all right for himself.

RYSSDAL: Felix Salmon blogs at Portfolio.com. He's writing on paper this month -- the cover story on Wired magazine, about the Gaussian copula formula. Felix, thanks a lot.

SALMON: A pleasure.



Read More http://www.wired.com/techbiz/it/magazine/17-03/wp_quant?currentPage=all#ixzz11KLndRNe

David X. Li

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David X. Li (born in China in the 1960s as simplified Chinese: ÀîÏéÁÖ; pinyin: L¨« Xiánglín[1]) is a quantitative analyst and a qualified actuary who in the early 2000s pioneered the use of Gaussian copula models for the pricing of collateralized debt obligations (CDOs).[2][3] The Financial Times called him "the world's most influential actuary,"[1] while in the aftermath of the Global financial crisis of 2008–2009, to which Li's model has been credited partly to blame,[1][2] his model has been called a "recipe for disaster".[2]

[edit] Biography

Li was born as Li Xianglin and raised in a rural part of China during the 1960s;[2] his family had been relocated during the Cultural Revolution to a rural village in southern China for "re-education".[1] Li was talented and with hard work he received a master's degree in economics from Nankai University, one of the country's most prestigious universities.[1] After leaving China in 1987 at the behest of the Chinese government to learn more about capitalism from the west,[1] he earned an MBA from Laval University in Quebec and a PhD in statistics from the University of Waterloo in Ontario.[2] At this point he changed his name to David X. Li.[1] His financial career began in 1997 at Canadian Imperial Bank of Commerce[2], and by 2003 he was director and global head of credit derivatives research at Citigroup.[1] In 2004 he moved to Barclays Capital and headed up the credit quantitative analytics team.[2] In 2008 Li moved to Beijing where he works for China International Capital Corporation as head of the risk management department.[2]

[edit] CDOs and Gaussian copula

Li's paper "On Default Correlation: A Copula Function Approach"[3] (2000) was the first appearance of the Gaussian copula applied to CDOs, which quickly became a tool for financial institutions to correlate associations between multiple securities.[2] This allowed for CDOs to be supposedly accurately priced for a wide range of investments that were previously too complex to price, such as mortgages. However in the aftermath of the Global financial crisis of 2008–2009 the model has been seen as fundamentally flawed and a "recipe for disaster".[2] According to Nassim Nicholas Taleb, "People got very excited about the Gaussian copula because of its mathematical elegance, but the thing never worked. Co-association between securities is not measurable using correlation"; in other words because past history is not predictive of the future "[a]nything that relies on correlation is charlatanism."[2]

Li himself apparently understood the limitation of his model, in 2005 saying "Very few people understand the essence of the model."[4] Li also wrote that "The current copula framework gains its popularity owing to its simplicity....However, there is little theoretical justification of the current framework from financial economics....We essentially have a credit portfolio model without solid credit portfolio theory."[5] Kai Gilkes of CreditSights says "Li can't be blamed", although he invented the model, it was the bankers who misinterpreted and misused it.[2]

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Palash Biswas
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