Attention Factors for Statistical Arbitrage
- URL: http://arxiv.org/abs/2510.11616v1
- Date: Mon, 13 Oct 2025 16:56:30 GMT
- Title: Attention Factors for Statistical Arbitrage
- Authors: Elliot L. Epstein, Rose Wang, Jaewon Choi, Markus Pelger,
- Abstract summary: Statistical arbitrage exploits temporal price differences between similar assets.<n>We develop a framework to jointly identify similar assets through factors, identify mispricing and form a trading policy.
- Score: 1.224954637705144
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Statistical arbitrage exploits temporal price differences between similar assets. We develop a framework to jointly identify similar assets through factors, identify mispricing and form a trading policy that maximizes risk-adjusted performance after trading costs. Our Attention Factors are conditional latent factors that are the most useful for arbitrage trading. They are learned from firm characteristic embeddings that allow for complex interactions. We identify time-series signals from the residual portfolios of our factors with a general sequence model. Estimating factors and the arbitrage trading strategy jointly is crucial to maximize profitability after trading costs. In a comprehensive empirical study we show that our Attention Factor model achieves an out-of-sample Sharpe ratio above 4 on the largest U.S. equities over a 24-year period. Our one-step solution yields an unprecedented Sharpe ratio of 2.3 net of transaction costs. We show that weak factors are important for arbitrage trading.
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