ICLR 2018
Skip to yearly menu bar Skip to main content


Workshop

Efficient Entropy For Policy Gradient with Multi-Dimensional Action Space

Yiming Zhang · Quan Vuong · Kenny Song · Xiao-Yue Gong · Keith Ross

East Meeting Level 8 + 15 #12

This paper considers entropy bonus, which is used to encourage exploration in policy gradient. In the case of high-dimensional action spaces, calculating the entropy and its gradient requires enumerating all the actions in the action space and running forward and backpropagation for each action, which may be computationally infeasible. We develop several novel unbiased estimators for the entropy bonus and its gradient. We apply these estimators to several models for the parameterized policies, including Independent Sampling, CommNet, Autoregressive with Modified MDP, and Autoregressive with LSTM. Finally, we test our algorithms on a multi-hunter multi-rabbit grid environment. The results show that our entropy estimators substantially improve performance with marginal additional computational cost.

Live content is unavailable. Log in and register to view live content