Dynamic modeling of mean-reverting spreads for statistical arbitrage

被引:18
作者
Triantafyllopoulos K. [1 ]
Montana G. [2 ]
机构
[1] Department of Probability and Statistics, University of Sheffield
[2] Department of Mathematics, Imperial College, London SW7 2AZ
关键词
Bayesian forecasting; Dynamic regression; Mean reversion; Pairs trading; State space model; Statistical arbitrage; Time-varying autoregressive processes;
D O I
10.1007/s10287-009-0105-8
中图分类号
学科分类号
摘要
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. We embrace the state-space framework for modeling spread processes and extend this methodology along three different directions. First, we introduce time-dependency 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. © 2009 Springer-Verlag.
引用
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页码:23 / 49
页数:26
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