Entropy-Aware Model Initialization for Effective Exploration in Deep Reinforcement Learning

08/24/2021
by   Sooyoung Jang, et al.
0

Encouraging exploration is a critical issue in deep reinforcement learning. We investigate the effect of initial entropy that significantly influences the exploration, especially at the earlier stage. Our main observations are as follows: 1) low initial entropy increases the probability of learning failure, and 2) this initial entropy is biased towards a low value that inhibits exploration. Inspired by the investigations, we devise entropy-aware model initialization, a simple yet powerful learning strategy for effective exploration. We show that the devised learning strategy significantly reduces learning failures and enhances performance, stability, and learning speed through experiments.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset