The Physics of Wall Street: a brief History of Predicting the Unpredictable
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The Prediction Company
• 157 information concerning the expected future performance of a stock — is not necessarily in conflict with the Prediction company’s success. It sounds like a paradox. But think about the basis for the efficient market hypothesis. the standard argument goes something like this: Suppose that there was some way to game the markets; that is, sup- pose that there was some reliable way to predict how prices are going to change over time. then investors would quickly try to capitalize on that information. If markets are always at a local high in the last week of May, or if they always drop on the Monday following a Giants vic- tory, then as soon as the pattern gets noticed, sophisticated investors will start selling stocks at the end of May and buying them as soon as the Giants win — with the result that prices will drop at the end of May and rise on Mondays after Giants victories, essentially washing out the pattern. Sure enough, every time an economist appears to find an anomalous pattern in market behavior, it seems to correct itself before the next study can be done to confirm it. fair enough. this kind of reasoning might make you think that even if markets somehow got out of whack, there are internal processes that would quickly push them back into shape. (of course, one of the major reasons to think that the efficient markets hypothesis is deeply flawed is the apparent presence of speculative bubbles and market crashes. Whether these kinds of large-scale anomalies, where prices seem to become unmoored, are predictable is the subject of the next chapter. Here I am thinking of smaller-scale deviations from perfect efficiency, supposing that such a thing exists.) But what are these internal pro- cesses? Well, they involve the actions of so-called sophisticated inves- tors, people who are quick to identify certain patterns and then adopt trading strategies designed to exploit those patterns. these sophisti- cated investors are what make the markets random, at least according to the standard line. But they do so by correctly identifying predictive patterns when they arise. Such patterns might disappear quickly. But if you’re the first person to notice such a pattern, the argument about self-correcting markets doesn’t apply. What does this mean? It means that even if you take the standard line on efficient markets seriously, there is still a place for sophisticated investors to profit. You just need to be the most sophisticated investor, the one most carefully attuned to market patterns, and the one best equipped to find ways to turn patterns into profit. And for this task, a few decades of experience in extracting information from chaotic sys- tems plus a room full of supercomputers could be a big help. In other words, the Prediction company succeeded by figuring out how to be the most sophisticated investor as often as possible. of course, not everyone buys the idea that markets are efficient. farmer, for one, has often criticized the idea that markets are unpre- dictable — and with good reason, since he made his fortune by pre- dicting them. Likewise, wild randomness can be a sign of underlying chaos — which, perhaps counterintuitively, indicates that there is often enough structure present to make useful predictions. And so what- ever your views on markets, there’s a place for the Predictors. It’s no surprise, then, that droves of investors have followed in farmer’s and Packard’s pioneering footsteps. In the twenty years since the first com- puters arrived at the door of 123 Griffin Street, black box models have taken hold on Wall Street. they are the principal tool of the quant hedge funds, from d. e. Shaw to citadel. the prediction business has become an industry. 158 • t h e p h y s i c s o f wa l l s t r e e t D idier sornette looked at the data again. He rubbed his forehead thoughtfully. the pattern was unmistakable. Some- thing was about to happen — something big. He was sure of it, even though predicting such things was notoriously difficult. He leaned back and looked out the window of his office at the University of california, Los Angeles geophysics institute. Such a tremor could have substantial consequences. the question, though, was what to do about it. Should he issue a warning? Would anyone believe him? And even if anyone did, what could be done? It was late summer 1997. Sornette had been working on this theory for years now, though the idea of applying it in the present context was new. Still, he had had ample time to test it with historical data. In each instance, before a major event, he had seen this same characteris- tic pattern. It looked like a wavy line, but with the oscillations getting faster and faster over time, the peaks becoming closer and closer to one another as though they were all trying to bunch up around the same point. the critical point. Sornette had found, both theoretically and experimentally, that these patterns should be robust enough to make predictions, to project when the critical point would occur. the Tyranny of the Dragon King c H A P t e r 7 same pattern appeared all over the place: before earthquakes, before avalanches, before certain kinds of materials exploded. But this time it was different. this time, Sornette actually saw the pattern in advance. It was the difference between realizing a prediction was possible — a risk-free endeavor — and actually making it. But Sornette was confi- dent. He would be willing to bet on this. He picked up the phone and called his colleague olivier Ledoit. Le- doit was a young faculty member at the Anderson Graduate School of Management at UcLA. Sornette told his friend what he had found. the data showed that a critical event was coming. earth-shattering, perhaps, but not geological: this event would be a potentially dramatic crash of the world’s financial markets. Sornette could even say when it would happen. His calculations put it at the end of october, just a few months away. Sornette had been working his way into finance for several years, but even so he was still a physicist. Ledoit knew the financial indus- try and could help him figure out the next steps. the two settled on a plan. first, they would file their warning with the authorities. Sor- nette and his postdoctoral researcher at UcLA, another geophysicist- cum-economist named Anders Johansen, wrote a notice and sent it to the french patent office. no one would believe them now, of course — none of the traditional methods of analyzing markets pointed to in- stability. And if they waited until after the crash, no one would believe them either, though for a different reason: their voices would be lost among the thousands of economists and investors who would insist they had seen this coming. the patent filing would be their insurance policy, their proof that they really had made the prediction, over a month before the crash. the notice was filed on September 17, 1997. It predicted a market crash in late october of that same year. the second step? Profit. It’s easy to make money when markets are rising. But in many ways, a market crash is an even more dramatic profit opportunity, if you can see it coming. there are several ways to make money off a crash, but the simplest way is buying put options. the options I discussed earlier are known as call options. You buy the right to purchase a stock at some fixed price, called the strike price, at some time in the future. If the market value of the stock goes above 160 • t h e p h y s i c s o f wa l l s t r e e t |
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