强化学习
计算机科学
人工智能
超参数
推论
组合性原则
玻尔兹曼机
熵(时间箭头)
数学优化
人工神经网络
机器学习
数学
量子力学
物理
作者
Tuomas Haarnoja,Haoran Tang,Pieter Abbeel,Sergey Levine
出处
期刊:International Conference on Machine Learning
日期:2017-08-06
卷期号:: 1352-1361
被引量:336
摘要
We propose a method for learning expressive energy-based policies for continuous states and actions, which has been feasible only in tabular domains before. We apply our method to learning maximum entropy policies, resulting into a new algorithm, called soft Q-learning, that expresses the optimal policy via a Boltzmann distribution. We use the recently proposed amortized Stein variational gradient descent to learn a stochastic sampling network that approximates samples from this distribution. The benefits of the proposed algorithm include improved exploration and compositionality that allows transferring skills between tasks, which we confirm in simulated experiments with swimming and walking robots. We also draw a connection to actor-critic methods, which can be viewed performing approximate inference on the corresponding energy-based model.
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