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Recovering Dropped Pronouns in Chinese Conversations via Modeling Their Referents

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arxiv 1906.02128 v1 pith:2UMLILPF submitted 2019-05-17 cs.CL

Recovering Dropped Pronouns in Chinese Conversations via Modeling Their Referents

classification cs.CL
keywords droppedpronounsreferentschineseconversationalgenresinformationmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Pronouns are often dropped in Chinese sentences, and this happens more frequently in conversational genres as their referents can be easily understood from context. Recovering dropped pronouns is essential to applications such as Information Extraction where the referents of these dropped pronouns need to be resolved, or Machine Translation when Chinese is the source language. In this work, we present a novel end-to-end neural network model to recover dropped pronouns in conversational data. Our model is based on a structured attention mechanism that models the referents of dropped pronouns utilizing both sentence-level and word-level information. Results on three different conversational genres show that our approach achieves a significant improvement over the current state of the art.

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