2020
DOI: 10.48550/arxiv.2010.11655
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Deep Reinforcement Learning with Stacked Hierarchical Attention for Text-based Games

Abstract: We study reinforcement learning (RL) for text-based games, which are interactive simulations in the context of natural language. While different methods have been developed to represent the environment information and language actions, existing RL agents are not empowered with any reasoning capabilities to deal with textual games. In this work, we aim to conduct explicit reasoning with knowledge graphs for decision making, so that the actions of an agent are generated and supported by an interpretable inferenc… Show more

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