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Transient Non-Stationarity and Generalisation in Deep Reinforcement Learning

Authors :
Igl, Maximilian
Farquhar, Gregory
Luketina, Jelena
Boehmer, Wendelin
Whiteson, Shimon
Publication Year :
2020

Abstract

Non-stationarity can arise in Reinforcement Learning (RL) even in stationary environments. For example, most RL algorithms collect new data throughout training, using a non-stationary behaviour policy. Due to the transience of this non-stationarity, it is often not explicitly addressed in deep RL and a single neural network is continually updated. However, we find evidence that neural networks exhibit a memory effect where these transient non-stationarities can permanently impact the latent representation and adversely affect generalisation performance. Consequently, to improve generalisation of deep RL agents, we propose Iterated Relearning (ITER). ITER augments standard RL training by repeated knowledge transfer of the current policy into a freshly initialised network, which thereby experiences less non-stationarity during training. Experimentally, we show that ITER improves performance on the challenging generalisation benchmarks ProcGen and Multiroom.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.05826
Document Type :
Working Paper