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Reinforcement Learning with Automated Auxiliary Loss Search

Authors :
He, Tairan
Zhang, Yuge
Ren, Kan
Liu, Minghuan
Wang, Che
Zhang, Weinan
Yang, Yuqing
Li, Dongsheng
Publication Year :
2022

Abstract

A good state representation is crucial to solving complicated reinforcement learning (RL) challenges. Many recent works focus on designing auxiliary losses for learning informative representations. Unfortunately, these handcrafted objectives rely heavily on expert knowledge and may be sub-optimal. In this paper, we propose a principled and universal method for learning better representations with auxiliary loss functions, named Automated Auxiliary Loss Search (A2LS), which automatically searches for top-performing auxiliary loss functions for RL. Specifically, based on the collected trajectory data, we define a general auxiliary loss space of size $7.5 \times 10^{20}$ and explore the space with an efficient evolutionary search strategy. Empirical results show that the discovered auxiliary loss (namely, A2-winner) significantly improves the performance on both high-dimensional (image) and low-dimensional (vector) unseen tasks with much higher efficiency, showing promising generalization ability to different settings and even different benchmark domains. We conduct a statistical analysis to reveal the relations between patterns of auxiliary losses and RL performance.<br />Comment: NeurIPS 2022 accepted paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.06041
Document Type :
Working Paper