While it is commonly agreed that
individual stock prices are difficult to forecast, there is evidence suggesting that it may be possible to forecast the price—the spread series—of certain stock
portfolios. A common way to attempt this is by constructing the portfolio such that the spread series is a
stationary process. To achieve spread stationarity in the context of pairs trading, where the portfolios only consist of two stocks, one can attempt to find a
cointegration irregularities between the two stock price series who generally show stationary correlation. This irregularity is assumed to be bridged soon and forecasts are made in the opposite nature of the irregularity. This would then allow for combining them into a portfolio with a stationary spread series. Regardless of how the portfolio is constructed, if the spread series is a stationary processes, then it can be modeled, and subsequently forecast, using techniques of
time series analysis. Among those suitable for pairs trading are
Ornstein-Uhlenbeck models,
autoregressive moving average (ARMA) models and (vector)
error correction models. Comprehensive empirical studies on pairs trading have investigated its profitability over the long-term in the US market using the distance method, co-integration, and
copulas. They have found that the distance and co-integration methods result in significant alphas and similar performance, but their profits have decreased over time. Copula pairs trading strategies result in more stable but smaller profits. == Algorithmic pairs trading ==