Back to Search Start Over

Transfer learning with causal counterfactual reasoning in Decision Transformers

Authors :
Boustati, Ayman
Chockler, Hana
McNamee, Daniel C.
Publication Year :
2021

Abstract

The ability to adapt to changes in environmental contingencies is an important challenge in reinforcement learning. Indeed, transferring previously acquired knowledge to environments with unseen structural properties can greatly enhance the flexibility and efficiency by which novel optimal policies may be constructed. In this work, we study the problem of transfer learning under changes in the environment dynamics. In this study, we apply causal reasoning in the offline reinforcement learning setting to transfer a learned policy to new environments. Specifically, we use the Decision Transformer (DT) architecture to distill a new policy on the new environment. The DT is trained on data collected by performing policy rollouts on factual and counterfactual simulations from the source environment. We show that this mechanism can bootstrap a successful policy on the target environment while retaining most of the reward.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.14355
Document Type :
Working Paper