Dynamic modeling of mean-reverting spreads for statistical arbitrage
نویسندگان
چکیده
Statistical arbitrage strategies, such as pairs trading and its generalizations, rely on the construction of mean-reverting spreads enjoying a certain degree of predictability. Gaussian linear state-space processes have recently been proposed as a model for such spreads under the assumption that the observed process is a noisy realization of some hidden states. Real-time estimation of the unobserved spread process can reveal temporary market inefficiencies which can then be exploited to generate excess returns. Building on previous work, we embrace the state-space framework for modeling spread processes and extend this methodology along three different directions. First, we introduce timedependency in the model parameters, which allows for quick adaptation to changes in the data generating process. Second, we provide an on-line estimation algorithm that can be constantly run in real-time. Being computationally fast, the algorithm is particularly suitable for building aggressive trading strategies based on high-frequency data and may be used as a monitoring device for mean-reversion. Finally, our framework naturally provides informative uncertainty measures of all the estimated parameters. Experimental results based on Monte Carlo simulations and historical equity data are discussed, including a co-integration relationship involving two exchange-traded funds.
منابع مشابه
Non-stationarity in Bid-ask Spreads: the Role of Tick Size Reduction
Mean-reversion of spreads follows directly from an error correction quote adjustment process plus a random walk theory of the quote midpoint as an implicit efficient price. In such a model, buys and sells are equally likely, and the trade direction is informationless. With asymmetric information and strategic trading, however, order flow is serially correlated, and the spread incorporates a tim...
متن کاملMachine Learning in Statistical Arbitrage
We apply machine learning methods to obtain an index arbitrage strategy. In particular, we employ linear regression and support vector regression (SVR) onto the prices of an exchange-traded fund and a stream of stocks. By using principal component analysis (PCA) in reducing the dimension of feature space, we observe the benefit and note the issues in application of SVR. To generate trading sign...
متن کاملLong-run relations among equity indices under different market conditions : Implications on the implementation of statistical arbitrage strategies
Compared with previous research, the present work extends existing literature by considering long-run relations amongmajor international stock market indices, under different market conditions, and the implications of these relations on the implementation of statistical arbitrage strategies. The examined data contain two bust phases interrupted by a mild bullish period. Employing cointegration ...
متن کاملMean Reversion with a Variance Threshold
Starting from a sample path of a multivariate stochastic process, we study several techniques to isolate linear combinations of the variables with a maximal amount of mean reversion, while constraining the variance of the combination to be larger than a given threshold. We show that many of the optimization problems arising in this context can be solved exactly using semidefinite programming an...
متن کاملStatistical Arbitrage in the U.S. Equities Market
We study model-driven statistical arbitrage in U.S. equities. The trading signals are generated in two ways: using Principal Component Analysis and using sector ETFs. In both cases, we consider the residuals, or idiosyncratic components of stock returns, and model them as mean-reverting processes. This leads naturally to “contrarian” trading signals. The main contribution of the paper is the co...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Comput. Manag. Science
دوره 8 شماره
صفحات -
تاریخ انتشار 2011