基于检索的多回合会话终端状态引导匹配网络

Weixin Tan, Dandan Song, Yujin Gao
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引用次数: 0

摘要

多回合对话响应选择的目的是从多个候选对象中选择最佳响应,并将其与对话上下文进行匹配。大多数情况下,一个充满上下文相关信息的回答往往是一个合适的选择。然而,在某些情况下,像“ok”这样简短的回答可能更合适。我们发现,在语义结束的对话之后通常会有简短的回应,因此在此之后不需要提供任何与上下文相关的信息。因此,除了将回应与语境相匹配之外,识别对话是否已经结束的状态,并学习如何分别从不同结束状态的语境中获取必要的信息也很重要。为了实现这一目标,我们提出了一个终端状态引导匹配网络,通过联合考虑响应长度和响应与最后几个话语之间的局部相似度来确定和合并终端状态。此外,为了获得更可靠的匹配结果,我们采用了多个描述性序列表示。评估结果表明,我们的模型在多个数据集上优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
End States Guided Matching Network for Retrieval-based Multi-turn Conversation
Multi-turn conversation response selection aims to choose the best response from multiple candidates based on matching it with the dialogue context. Mostly, a response full of context-related information tends to be a proper choice. However, in some cases, a brief response like "ok" could be the more appropriate one. We find that it is a semantically ended conversation that a brief response usually comes after, so there is no need to provide any context-related information after that. Thus, in addition to match the response with context, it is also critical to recognize the state of whether a dialogue has ended, and learn how to get necessary information from context of different end states separately. To achieve this, we propose an end states guided matching network to determine and incorporate the end states by jointly consider the length of response and the local similarity between the response and last few utterances. In addition, we adopt multiple descriptive sequence representations for a more reliable matching result. Evaluation results demonstrate that our model outperforms the state-of-the-art methods in multiple datasets.
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