[OFF TOPIC - Program Trading (more arguments lending towards TA)]
December 16, 1997
Mathematical Market Model Lets Firm Squeeze Out Subjectivity
By GREG IP Staff Reporter of THE WALL STREET JOURNAL
RADNOR, Pa. -- If you want to win in the stock market, you can take the usual route: Pore over companies' financial statements, study their management, consult some leading securities analysts, then call up and place an order with your broker, and wait.
Or you could forget about annual reports and company management and instead get a Ph.D. in math, design a model of the stock market, load it into a hundred high-powered computers around the world, and then let it tell you how to buy and sell hundreds of millions of shares a week.
That's how Andrew Sterge does it.
His formulas have helped turn BNP/Cooper Neff Advisors, a firm based in this town near Philadelphia but owned in Paris, into one of the biggest stock traders in the world. Every week, it trades 100 million to 150 million shares on the New York Stock Exchange, from 4% to as much as 6% of the Big Board's total volume. It also buys and sells millions of Nasdaq shares, while sister operations trade massive volumes in Germany, France, Italy, Spain, Australia and Japan. Yet the firm is almost unknown outside Wall Street, and even to many people on the Street.
Its faceless obscurity seems appropriate to an approach based on quantification and more quantification, with an absolute minimum of human judgment about companies. Traders at the firm don't know the price-earnings ratios or dividend yields of stocks they buy and sell. They don't know the companies' debt levels or book values or product pipelines or revenue growth. In fact, they don't even know their names.
"You don't want to know them," says Mr. Sterge. "That's extraneous." At BNP/Cooper Neff, stocks aren't companies in industry sectors. They are "mathematical objects."
Ordinary research tools matter little. "I don't really know how to read a balance sheet," this buyer and seller of millions of shares a day says. "I've never looked at an annual report."
Do the Math
What he knows is mathematics. Armed with a doctorate from Cornell University and a model he has refined for six years, Mr. Sterge and BNP/Cooper Neff carry a standard piece of investment advice -- stick to your discipline and don't let emotions sway you -- to its logical extreme. In the lingo of Wall Street, they make their decisions with a "black box."
The 38-year-old Mr. Sterge, who runs BNP/Cooper Neff's proprietary trading, thinks studying news and financial reports to determine a stock's intrinsic value is a waste of time. "There's no god who knows the fair value of any traded asset," he says with almost religious fervor. "The only way you can know anything about value is how the market tries to find an equilibrium. That's all the market is -- a big feedback mechanism trying to find equilibrium."
And the only way to beat the market, he adds, is to trade thousands of stocks, by the millions of shares, in search of tiny inefficiencies. The computer won't be right all of the time, not by any means, but if it is right a little more than half the time, those huge volumes will turn that narrow edge into big profits.
Minimizing Risk
Though BNP/Cooper Neff has a major options-trading operation, Mr. Sterge's trading arm, BNP/Cooper Neff Advisors, has only one client, Banque Nationale de Paris, which bought the firm three years ago. The bank has its own brokerage firm, BNP Securities, so commissions on the massive trading aren't a problem. The results of this proprietary trading needn't be made public, and aren't. Cooper Neff's only published results are those of two new hedge funds that it has started and hopes to offer to investors early next year.
One of them, open since May, beat the S&P 500 by 14 percentage points in its first six months. The other, which merely attempts to beat the return on Treasury bills, is up 21% in its first 13 months. T-bills returned about 6% in that time. In that fund, for every dollar of stock owned, a dollar's worth is sold short, or borrowed and sold in the expectation of buying it back later more cheaply.
Mr. Sterge concedes that those track records are too short to mean much. But he points to what the firm considers an even more important achievement: It gets its results with low risk. The hedge funds' volatility is a small fraction of that of major market indexes. Volatility for a given return in the proprietary trading, Mr. Sterge says, is a mere one-fifth that of the S&P 500. More reward with less risk is the holy grail of investing.
So what goes into the model? Well, those many things the traders don't know are mostly in there, though just what weight they have and how they figure in the model Mr. Sterge isn't saying. Although he and his traders don't bother to know the details of individual stocks, the computer model is constantly sweeping through a variety of databases and updating such things as earnings, book value, price momentum, volatility and liquidity.
But some things it ignores because Mr. Sterge has found them of little use, such as "earnings surprises" -- companies beating or missing analysts' estimates. Too many others trade on that, he says. In fact, he says, investors often think they have found a pattern, particularly a historical one, that they can exploit, without realizing that when everyone with a computer can spot the pattern, the profit opportunities vanish.
Based on all its data about the market's internal workings and stocks' historic and theoretical relationships, the model rates thousands of stocks against one another as overvalued or undervalued.
John Culbertson, an executive vice president at the firm, hopes eventually to take human beings out of the hedge-fund management altogether, except as monitors. The model's consistency can't be confirmed until the last "fuzzy slice of subjectivity" is removed, he says. If "a manager is going through a divorce, for example, you want to make sure that's not seen in the results of the fund."
For now, there are people. But headquarters here in this Pennsylvania town are nothing like the frenetic trading desks of some big Wall Street firms. There are no traders screaming into phones, waving research reports or scanning the newswires for market-moving items.
Easy Does It
Instead, half a dozen recent college graduates sit quietly staring into computer screens. Periodically, a window pops up on the screen. A red one offers a basket of stocks to sell, a green one a basket to buy. The computer spits out the expected return over a typical 10-day holding period and the risk, in dollars, of the basket. The trader clicks a mouse to accept or reject the trade.
Taking a break from the seemingly leisurely pace, head trader Robert Cavallaro says, "The misconception of the trading environment is it's something terrible that burns you out and kills you." With crewcut hair, jeans, a T-shirt and workboot-clad feet up on the desk, he looks more like a punk rocker than a stock trader. "The way we run trading is fresh and energizing, not taxing," he says.
His is by no means the only firm that uses a quantitative approach. In the first place, everybody is quantitative to some degree, even such a legendary stock picker as former Vanguard Windsor Fund manager John Neff (no relation). "I'm not against the quantitative approach because mine's quantitative," he says, noting that a computer can help with one of his goals: keeping emotion out of investing.
But even the more highly quantitative trading firms have long had plenty of competition -- and it keeps getting stiffer. As vast computer power has come within the reach of more people, the most profitable inefficiencies in the market have been all but arbitraged away. For example, the simultaneous purchase of stock-index futures and sale of stocks, or vice versa -- the type of program trading blamed in part for the 1987 crash -- is much less profitable than 10 years ago. To make money, "quants" need ever-increasing volumes and ever-more-sophisticated models.
In the same circle as BNP/Cooper Neff is a cluster of other low-profile but highly active firms: D.E. Shaw Investments L.P. in New York, Susquehanna Investment Group in Bala Cynwyd, Pa., and Hull Trading Co. in Chicago. Among big Wall Street firms, there is the proprietary-trading desk at Morgan Stanley, Dean Witter, Discover & Co. Many investment funds also pick stocks according to quantitative models.
But nobody else, it appears, does so in as much volume as BNP/Cooper Neff. To other traders, the firm and what it does are one big mystery. "We've seen the volumes these people put up in the program-trading statistics every week, and for the life of us we can't figure out what kind of strategy they're doing," says Eric Noll, an executive at Susquehanna.
Part of it is the firm's location. Mr. Sterge and his staff are strangers on Wall Street and like it that way. It keeps them from falling into boring strategies like "the cash-index arbitrage thing," Mr. Sterge says, with a trace of derision.
Quantifying Everything
Besides, hanging out with Wall Street types won't improve your math, which has always been the way Mr. Sterge looks at the world. His doctoral thesis built a mathematical model of how Congress operates. During several years as a pro tennis player, he found himself bedeviled by statistical frustration: "I beat some highly ranked people and lost to people who weren't highly ranked," he says.
He was trading interest-rate options for CoreStates Financial Corp. in Philadelphia when he met Roy Neff in 1989. The two had been riding the same commuter train. Mr. Neff, a founding partner of Cooper Neff, which was then primarily an options firm, had noticed Mr. Sterge's reading matter. One day, seeing him buried in a book about "stochastic processes," Mr. Neff introduced himself.
Mr. Sterge joined Cooper Neff shortly afterward and two years later began experimenting with program trading. He began with a conviction that a stock's value could be seen only in how it trades with thousands of others. He bet that by designing a model that tried to find variances between where stocks traded and where they theoretically should trade, he could make money.
He was wrong, at first. He lost money for months. But not faith. He kept rewriting the model and reloading it into the firm's computers, until it began to work.
What Multiple?
A simplified example suggests what the model looks for. Gold stocks historically have traded at much higher prices relative to their earnings than the average stock, even though their earnings grow much more slowly. That doesn't seem to make sense. But gold stocks have the unusual property of usually rising when the rest of the market is falling, and vice versa. Thus they reduce the volatility of a portfolio. Investors are willing to pay for that.
By contrast, Merrill Lynch & Co., despite tremendous earnings growth, trades at a lower P/E ratio than the average stock. This is apparently because it adds volatility to a portfolio; when the market goes up, Merrill usually goes up even more, and vice versa. The valuations of gold stocks and Merrill Lynch make sense only as part of a larger universe.
Mr. Sterge says any reasonably smart analyst can identify some undervalued and overvalued stocks. But it's another matter to bet on such knowledge with as little risk as possible. For example, why not just buy the most undervalued ones and sell -- or sell short -- the most overvalued? The problem is that a highly overvalued stock might also be extremely volatile, so you could watch your returns swing wildly from profit to loss before you finished.
Instead, Cooper Neff goes beyond deciding which stocks are over- or undervalued and tries to make bets between stocks with similar mathematical characteristics, such as volatility and liquidity. It largely ignores such things as their industry and market capitalization.
Ignoring News
What if terrible news breaks one day on a stock the model has bought? Too bad. Cooper Neff owned Philip Morris Cos. the day in April 1993 that it plunged 23% on news of a big cut in cigarette prices. "We got smoked, but ended up having a really good money-making day because we just traded," Mr. Sterge says. "We ignore those things. If we happen to be long a stock that gets toasted, we don't cut our losses. We let the model do the work. If it wants to get out, we get out. If it wants to stay in, we stay in. I can't outguess the damn model.
"Humans create the model, but I let the model make the bets," Mr. Sterge says.
He does use his judgment, of course, to try to make the model better. He reads academic journals and scholarly working papers for investment ideas. He often spends Fridays at his house on North Carolina's Outer Banks scrawling equations in the back of his day planner. The final result is a closely guarded secret. Mr. Sterge and his research director are the only two people in the company who can actually get at the model, which is encrypted in each trader's computer. The traders must sign confidentiality agreements even though few would understand the model if they saw it.
And it isn't just the model. The system also depends on massive amounts of computing power and extremely low trading expenses and cost of capital. Without those, even an investor as math-savvy as Mr. Sterge couldn't replicate the results.
New recruits don't have to know math when they join BNP/Cooper Neff, but they'd better be ready to learn. Mr. Sterge gives them lessons in linear algebra, along with a reading list that includes Amir D. Aczel's "Fermat's Last Theorem," about the quest to solve a 360-year-old math problem. Back from a plane trip recently, Mr. Sterge, gazing at a picture of the Rockies in his office, suddenly challenged his staff to calculate how far the horizon was from 40 miles up. Then he solved the problem for them: 593 miles.
Cooper Neff's program trading went global after the firm was acquired at the end of 1994 by Banque Nationale de Paris. The bank's BNP Arbitrage unit gave Cooper Neff money to manage -- as much as $11 billion -- and asked it to reproduce its system in BNP offices around the world.
The French Way
At first, cultures clashed. Setting up at the bank's Paris office, Mr. Sterge and his fellow Americans would start work at 7 a.m. and see the French traders roll in at 9:55, just before the market opened. The French knocked off for lengthy lunches while the Americans, loath to stop trading, ordered in, just as in Radnor.
Asked about this, Yann Gerardin, managing director of BNP Arbitrage, shrugs. "Have you been in Radnor?" he asks, conjuring up images of office parks and lawns and not much else. "Then you understand why you don't have lunch there. Have you been in Paris? Then you understand why we do have lunch." Nowadays, Paris traders are eating at their desks more often.
Language, however, has posed few problems. Not many of the Americans spoke good French. But "I can make more money with their math than with their French," Mr. Gerardin says.
The firm now trades about 90 million shares a week in Italy, Mr. Sterge says, along with 30 million a week in Australia and Japan and five million a week in France, Germany and Spain. This comes to about 5% of the national markets except for Japan, where it is less. Canada and Britain are next up. Although each market is traded separately, Mr. Sterge doesn't see them that way; he sees the world as 7,000 stocks to trade against one another in one gigantic hedge fund.
In the U.S., some rivals have questioned whether the firm can do such big volume and still adhere to the New York Stock Exchange's "collars." These require that when the Dow Jones Industrial Average rises or falls 50 points, program traders shifting between stocks and stock-index futures or options may only buy stocks in falling markets or sell stocks in rising markets. One rival trading executive says firms have raised this issue with the Big Board, but it is satisfied BNP/Cooper Neff is playing by the rules. The exchange says it doesn't comment on members' trading.
The firm's trading may grow further if liquidity in the market, Mr. Sterge's math and business opportunities permit. But "obviously there is a limit," Mr. Gerardin says. "We're not going to trade against ourselves." |