作者
Conor Francis Hayes, Mathieu Reymond, Diederik Marijn Roijers, Enda Howley, Patrick Mannion
发表日期
2021/5/5
研讨会论文
Proceedings of the 20th International Conference on Autonomous Agents and Multiagent Systems (AAMAS)
简介
In many risk-aware and multi-objective reinforcement learning settings, the utility of the user is derived from the single execution of a policy. In these settings, making decisions based on the average future returns is not suitable. For example, in a medical setting a patient may only have one opportunity to treat their illness. When making a decision, just the expected return–known in reinforcement learning as the value–cannot account for the potential range of adverse or positive outcomes a decision may have. Our key insight is that we should use the distribution over expected future returns differently to represent the critical information that the agent requires at decision time. In this paper, we propose Distributional Monte Carlo Tree Search, an algorithm that learns a posterior distribution over the utility of the different possible returns attainable from individual policy executions, resulting in good policies for risk-aware settings. Moreover, our algorithm outperforms the state-of-the-art in multi-objective reinforcement learning for the expected utility of the returns.
引用总数
20212022202320244884
学术搜索中的文章
CF Hayes, M Reymond, DM Roijers, E Howley… - Proceedings of the 20th international conference on …, 2021