Back to Search Start Over

Conditionally Risk-Averse Contextual Bandits

Authors :
Farsang, Mónika
Mineiro, Paul
Zhang, Wangda
Publication Year :
2022

Abstract

Contextual bandits with average-case statistical guarantees are inadequate in risk-averse situations because they might trade off degraded worst-case behaviour for better average performance. Designing a risk-averse contextual bandit is challenging because exploration is necessary but risk-aversion is sensitive to the entire distribution of rewards; nonetheless we exhibit the first risk-averse contextual bandit algorithm with an online regret guarantee. We conduct experiments from diverse scenarios where worst-case outcomes should be avoided, from dynamic pricing, inventory management, and self-tuning software; including a production exascale data processing system.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.13573
Document Type :
Working Paper