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Expected Scalarised Returns Dominance: A New Solution Concept for Multi-Objective Decision Making

Authors :
Hayes, Conor F.
Verstraeten, Timothy
Roijers, Diederik M.
Howley, Enda
Mannion, Patrick
Publication Year :
2021

Abstract

In many real-world scenarios, the utility of a user is derived from the single execution of a policy. In this case, to apply multi-objective reinforcement learning, the expected utility of the returns must be optimised. Various scenarios exist where a user's preferences over objectives (also known as the utility function) are unknown or difficult to specify. In such scenarios, a set of optimal policies must be learned. However, settings where the expected utility must be maximised have been largely overlooked by the multi-objective reinforcement learning community and, as a consequence, a set of optimal solutions has yet to be defined. In this paper we address this challenge by proposing first-order stochastic dominance as a criterion to build solution sets to maximise expected utility. We also propose a new dominance criterion, known as expected scalarised returns (ESR) dominance, that extends first-order stochastic dominance to allow a set of optimal policies to be learned in practice. We then define a new solution concept called the ESR set, which is a set of policies that are ESR dominant. Finally, we define a new multi-objective distributional tabular reinforcement learning (MOT-DRL) algorithm to learn the ESR set in a multi-objective multi-armed bandit setting.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.01048
Document Type :
Working Paper
Full Text :
https://doi.org/10.1007/s00521-022-07334-x