首页 /研究 /Model Based Meta Learning of Critics for Policy Gradients
LEARNING

Model Based Meta Learning of Critics for Policy Gradients

Sarah Bechtle, Ludovic Righetti, Franziska Meier

发表年份
2022
访问权限
开放获取

摘要

Being able to seamlessly generalize across different tasks is fundamental for robots to act in our world. However, learning representations that generalize quickly to new scenarios is still an open research problem in reinforcement learning. In this paper we present a framework to meta-learn the critic for gradient-based policy learning. Concretely, we propose a model-based bi-level optimization algorithm that updates the critics parameters such that the policy that is learned with the updated critic gets closer to solving the meta-training tasks. We illustrate that our algorithm leads to learned critics that resemble the ground truth Q function for a given task. Finally, after meta-training, the learned critic can be used to learn new policies for new unseen task and environment settings via model-free policy gradient optimization, without requiring a model. We present results that show the generalization capabilities of our learned critic to new tasks and dynamics when used to learn a new policy in a new scenario.

关键词

cs.LGcs.AI

相关论文

查看 LEARNING 分类全部论文