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End-to-End Neural Context Reconstruction in Chinese Dialogue

机译:对话中端到端的神经语境重构

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摘要

We tackle the problem of context reconstruction in Chinese dialogue, where the task is to replace pronouns, zero pronouns, and other referring expressions with their referent nouns so that sentences can be processed in isolation without context. Following a standard decomposition of the context reconstruction task into referring expression detection and coref-erence resolution, we propose a novel end-to-end architecture for separately and jointly accomplishing this task. Key features of this model include POS and position encoding using CNNs and a novel pronoun masking mechanism. One perennial problem in building such models is the paucity of training data, which we address by augmenting previously-proposed methods to generate a large amount of realistic training data. The combination of more data and better models yields accuracy higher than the state-of-the-art method in coreference resolution and end-to-end context reconstruction.
机译:我们处理中文对话中的上下文重建问题,该任务是用代名词代替代词,零代词和其他代词,以便可以在没有上下文的情况下单独处理句子。在将上下文重建任务标准分解为引用表达检测和核心分辨力之后,我们提出了一种新颖的端到端体系结构,用于单独和共同完成此任务。该模型的主要功能包括POS和使用CNN的位置编码以及新颖的代词掩盖机制。建立此类模型的一个长期问题是培训数据的匮乏,我们通过扩展先前提出的方法来生成大量现实的培训数据来解决这一问题。在共指分辨率和端到端上下文重建方面,更多数据和更好模型的结合产生的精度要高于最新技术。

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