TRIPODS Winter School & Workshop- William Hamilton

/ January 4, 2021/

When:
January 15, 2021 @ 3:30 pm – 4:15 pm
2021-01-15T15:30:00-05:00
2021-01-15T16:15:00-05:00

Title- Learning Dynamic Belief Graphs to Generalize on Text-Based Games

Abstract- Playing text-based games requires skills in processing natural language and sequential decision making. Achieving human-level performance on text-based games remains an open challenge, and prior research has largely relied on hand-crafted structured representations and heuristics. In this work, we investigate how an agent can plan and generalize in text-based games using graph-structured representations learned end-to-end from raw text. We propose a novel graph-aided transformer agent (GATA) that infers and updates latent belief graphs during planning to enable effective action selection by capturing the underlying game dynamics. GATA is trained using a combination of reinforcement and self-supervised learning. Our work demonstrates that the learned graph-based representations help agents converge to better policies than their text-only counterparts and facilitate effective generalization across game configurations. Experiments on 500+ unique games from the TextWorld suite show that our best agent outperforms text-based baselines by an average of 24.2%.

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