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Retrieval-guided Dialogue Response Generation via a Matching-to-Generation Framework

机译:通过匹配生成框架进行检索指导的对话响应生成

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摘要

End-to-end sequence generation is a popular technique for developing open domain dialogue systems, though they suffer from the safe response problem. Researchers have attempted to tackle this problem by incorporating generative models with the returns of retrieval systems. Recently, a skeleton-then-response framework has been shown promising results for this task. Nevertheless, how to precisely extract a skeleton and how to effectively train a retrieval-guided response generator are still challenging. This paper presents a novel framework in which the skeleton extraction is made by an interpretable matching model and the following skeleton-guided response generation is accomplished by a separately trained generator. Extensive experiments demonstrate the effectiveness of our model designs.
机译:端到端序列生成是开发开放域对话系统的一种流行技术,尽管它们存在安全响应问题。研究人员已尝试通过将生成模型与检索系统的返回值合并来解决此问题。最近,已经显示出骨架-然后-响应框架对于该任务有希望的结果。然而,如何精确地提取骨骼以及如何有效地训练由检索引导的响应生成器仍然是具有挑战性的。本文提出了一种新颖的框架,其中通过可解释的匹配模型进行骨骼提取,并通过单独训练的生成器完成以下骨骼指导的响应生成。大量的实验证明了我们的模型设计的有效性。

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