Response selection from unstructured documents for human-computer conversation systems

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摘要

This paper studies response selection for human-computer conversation systems. Existing retrieval-based human-computer conversation systems are intended to reply to user utterances based on existing utterance-response pairs. However, collecting sufficient utterance-response pairs is intractable in practical situations, especially for many specific domains. We introduce DocChat a novel information retrieval approach for human-computer conversation systems that can use unstructured documents rather than semi-structured utterance-response pairs, to react to user utterances. The key of DocChat is a learning to rank model with features designed at various levels of granularity which is proposed to quantify the relevance between utterances and responses directly. We conduct comprehensive experiments on both sentence selection and real human-computer conversation scenarios. Empirical studies of sentence selection datasets shows reasonable improvements and the strong adaptability of our model. We compare DocChat with Xiaoice, a famous open domain chitchat engine in China. Side-by-side evaluation shows that DocChat is a good complement for human-computer conversation systems using utterance-response pairs as the primary source of responses. Furthermore, we release a large scale open-domain dataset for sentence selection which contains 304,413 query-sentence pairs.

论文关键词:Human-computer conversation system,Human-robot interaction,Text matching,Natural language processing,Artificial intelligence,00-01,99-00

论文评审过程:Received 19 June 2017, Revised 23 November 2017, Accepted 25 November 2017, Available online 2 December 2017, Version of Record 17 January 2018.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.11.033