Fire Burns, Swords Cut: Commonsense Inductive Bias for Exploration in Text-based Games

Abstract

Text-based games (TGs) are exciting testbeds for developing deep reinforcement learning techniques due to their partially observed environments and large action spaces. In these games, the agent learns to explore the environment via natural language interactions with the game simulator. A fundamental challenge in TGs is the efficient exploration of the large action space when the agent has not yet acquired enough knowledge about the environment. We propose an exploration technique that injects external commonsense knowledge, via a pretrained language model (LM), into the agent during training when the agent is the most uncertain about its next action. Our method exhibits improvement on the collected game scores during the training in four out of nine games from Jericho. Additionally, the produced trajectory of actions exhibit lower perplexity, when tested with a pretrained LM, indicating better closeness to human language.

Publication
60th Annual Meeting of the Association for Computational Linguistics (ACL-2022)
Dongwon Ryu
Dongwon Ryu
PhD Student @ Monash (02/2021-)

My research interests include reinforcement learning, knowledge graph and NLP.

Shirui Pan
Shirui Pan
Professor | ARC Future Fellow

My research interests include data mining, machine learning, and graph analysis.