Beyond expected value: geometric mean optimization for long-term policy performance in reinforcement learning

Research output: Chapter in Book/Report/Conference proceedingConference article in proceedingsScientificpeer-review

Abstract

Reinforcement learning (RL) algorithms typically optimize the expected cumulative reward, i.e., the expected value of the sum of scalar rewards an agent receives over the course of a trajectory. The expected value averages the performance over an infinite number of trajectories. However, when deploying the agent in the real world, this ensemble average may be uninformative for the performance of individual trajectories. Thus, in many applications, optimizing the long-term performance of individual trajectories might be more desirable. In this work, we propose a novel RL algorithm that combines the standard ensemble average with the time-average growth rate, a measure for the long-term performance of individual trajectories. We first define the Bellman operator for the time-average growth rate. We then show that, under multiplicative reward dynamics, the geometric mean aligns with the time-average growth rate. To address more general and unknown reward dynamics, we propose a modified geometric mean with N-sliding window that captures the path-dependency as an estimator for the time-average growth rate. This estimator is embedded as a regularizer into the objective, forming a practical algorithm and enabling the policy to benefit from ensemble average and time-average simultaneously. We evaluate our algorithm in challenging simulations, where it outperforms conventional RL methods.
Original languageEnglish
Title of host publicationProceedings of the IEEE Conference on Decision and Control
PublisherIEEE
Number of pages7
ISBN (Electronic)979-8-3315-2627-6
DOIs
Publication statusPublished - 12 Jan 2026
MoE publication typeA4 Conference publication
EventIEEE Conference on Decision and Control - Rio de Janeiro, Brazil
Duration: 10 Dec 202512 Dec 2025

Publication series

NameProceedings of the IEEE Conference on Decision & Control
ISSN (Electronic)2576-2370

Conference

ConferenceIEEE Conference on Decision and Control
Abbreviated titleCDC
Country/TerritoryBrazil
CityRio de Janeiro
Period10/12/202512/12/2025

Funding

We acknowledge the financial support of the Finnish Ministry of Education and Culture through the Intelligent Work Machines Doctoral Education Pilot Program (IWM VN/3137/2024-OKM-4)

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