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A Distributional View on Multi-Objective Policy Optimization

Abbas Abdolmaleki, Sandy H. Huang, Leonard Hasenclever, Michael Neunert, Hao Song, Martina Zambelli, Murilo Fernandes Martins, Nicolas Heess, Raia Hadsell, Martin Riedmiller

发表年份
2020
引用次数
13

摘要

Many real-world problems require trading off multiple competing objectives. However, these objectives are often in different units and/or scales, which can make it challenging for practitioners to express numerical preferences over objectives in their native units. In this paper we propose a novel algorithm for multi-objective reinforcement learning that enables setting desired preferences for objectives in a scale-invariant way. We propose to learn an action distribution for each objective, and we use supervised learning to fit a parametric policy to a combination of these distributions. We demonstrate the effectiveness of our approach on challenging high-dimensional real and simulated robotics tasks, and show that setting different preferences in our framework allows us to trace out the space of nondominated solutions.

关键词

Reinforcement learningComputer scienceArtificial intelligenceMachine learningParametric statisticsTRACE (psycholinguistics)Action (physics)Mathematical optimizationInvariant (physics)Robotics

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