Trading Algorithms with Learning in Latent Alpha Models
42 Pages Posted: 19 Nov 2016 Last revised: 21 Dec 2017
Date Written: November 17, 2016
Abstract
Alpha signals for statistical arbitrage strategies are often driven by latent factors. This paper analyses how to optimally trade with latent factors that cause prices to jump and diffuse. Moreover, we account for the effect of the trader's actions on quoted prices and the prices they receive from trading. Under fairly general assumptions, we demonstrate how the trader can learn the posterior distribution over the latent states, and explicitly solve the latent optimal trading problem. We provide a verification theorem, and a methodology for calibrating the model by deriving a variation of the expectation-maximization algorithm. To illustrate the efficacy of the optimal strategy, we demonstrate its performance through simulations and compare it to strategies which ignore learning in the latent factors. We also provide calibration results for a particular model using INTC as an example.
Keywords: Algorithmic Trading, Statistical Arbitrage, Latent Alpha, Stochastic Control, Machine Learning
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