English

Detecting data-driven robust statistical arbitrage strategies with deep neural networks

Computational Finance 2024-02-27 v4 Machine Learning Mathematical Finance Statistical Finance Trading and Market Microstructure

Abstract

We present an approach, based on deep neural networks, that allows identifying robust statistical arbitrage strategies in financial markets. Robust statistical arbitrage strategies refer to trading strategies that enable profitable trading under model ambiguity. The presented novel methodology allows to consider a large amount of underlying securities simultaneously and does not depend on the identification of cointegrated pairs of assets, hence it is applicable on high-dimensional financial markets or in markets where classical pairs trading approaches fail. Moreover, we provide a method to build an ambiguity set of admissible probability measures that can be derived from observed market data. Thus, the approach can be considered as being model-free and entirely data-driven. We showcase the applicability of our method by providing empirical investigations with highly profitable trading performances even in 50 dimensions, during financial crises, and when the cointegration relationship between asset pairs stops to persist.

Keywords

Cite

@article{arxiv.2203.03179,
  title  = {Detecting data-driven robust statistical arbitrage strategies with deep neural networks},
  author = {Ariel Neufeld and Julian Sester and Daiying Yin},
  journal= {arXiv preprint arXiv:2203.03179},
  year   = {2024}
}
R2 v1 2026-06-24T10:04:07.402Z