Risk-Aware Linear Bandits: Theory and Applications in Smart Order Routing

32 Pages Posted: 9 Aug 2022 Last revised: 23 Feb 2023

See all articles by Jingwei Ji

Jingwei Ji

University of Southern California

Renyuan Xu

University of Southern California - Epstein Department of Industrial & Systems Engineering

Ruihao Zhu

Cornell University

Date Written: August 1, 2022

Abstract

Motivated by practical considerations in machine learning for financial decision-making, such as risk-aversion and large action space, we initiate the study of risk-aware linear bandits. Specifically, we consider regret minimization under the mean-variance measure when facing a set of actions whose rewards can be expressed as linear functions of (initially) unknown parameters. Driven by the variance-minimizing G-optimal design, we propose the Risk-Aware Explore-then-Commit (RISE) algorithm and the Risk-Aware Successive Elimination (RISE++) algorithm. Then, we rigorously analyze their regret upper bounds to show that, by leveraging the linear structure, the algorithms can dramatically reduce the regret when compared to existing methods. Finally, we demonstrate the performance of the algorithms by conducting extensive numerical experiments in a synthetic smart order routing setup. Our results show that both RISE and RISE++ can outperform the competing methods, especially in complex decision-making scenarios.

Keywords: online learning, bandit, regret analysis, machine learning theory, smart order routing, algorithmic trading, mean-variance, risk-aware decision-making

Suggested Citation

Ji, Jingwei and Xu, Renyuan and Zhu, Ruihao, Risk-Aware Linear Bandits: Theory and Applications in Smart Order Routing (August 1, 2022). Available at SSRN: https://ssrn.com/abstract=4178738 or http://dx.doi.org/10.2139/ssrn.4178738

Jingwei Ji (Contact Author)

University of Southern California ( email )

3650 McClintock Ave
Los Angeles, CA 90089
United States

Renyuan Xu

University of Southern California - Epstein Department of Industrial & Systems Engineering ( email )

United States

HOME PAGE: http://renyuanxu.github.io

Ruihao Zhu

Cornell University ( email )

Ithaca, NY 14853
United States

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