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Narrative Modeling with Memory Chains and Semantic Supervision

2018-05-16ACL 2018Code Available0· sign in to hype

Fei Liu, Trevor Cohn, Timothy Baldwin

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Abstract

Story comprehension requires a deep semantic understanding of the narrative, making it a challenging task. Inspired by previous studies on ROC Story Cloze Test, we propose a novel method, tracking various semantic aspects with external neural memory chains while encouraging each to focus on a particular semantic aspect. Evaluated on the task of story ending prediction, our model demonstrates superior performance to a collection of competitive baselines, setting a new state of the art.

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