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Multimodal Hierarchical Reinforcement Learning Policy for Task-Oriented Visual Dialog

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arxiv 1805.03257 v1 pith:EUM4ZUC4 submitted 2018-05-08 cs.CL

Multimodal Hierarchical Reinforcement Learning Policy for Task-Oriented Visual Dialog

classification cs.CL
keywords dialogstateframeworkhierarchicalmultimodaladaptationcontextlanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Creating an intelligent conversational system that understands vision and language is one of the ultimate goals in Artificial Intelligence (AI)~\cite{winograd1972understanding}. Extensive research has focused on vision-to-language generation, however, limited research has touched on combining these two modalities in a goal-driven dialog context. We propose a multimodal hierarchical reinforcement learning framework that dynamically integrates vision and language for task-oriented visual dialog. The framework jointly learns the multimodal dialog state representation and the hierarchical dialog policy to improve both dialog task success and efficiency. We also propose a new technique, state adaptation, to integrate context awareness in the dialog state representation. We evaluate the proposed framework and the state adaptation technique in an image guessing game and achieve promising results.

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