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Retrieve and Refine: Improved Sequence Generation Models For Dialogue

机译:检索和细化:改进的对话序列生成模型

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摘要

Sequence generation models for dialogue are known to have several problems: they tend to produce short, generic sentences that are un-informative and unengaging. Retrieval models on the other hand can surface interesting responses, but are restricted to the given retrieval set leading to erroneous replies that cannot be tuned to the specific context. In this work we develop a model that combines the two approaches to avoid both their deficiencies: first retrieve a response and then refine it - the final sequence generator treating the retrieval as additional context. We show on the recent Con-vAI2 challenge task our approach produces responses superior to both standard retrieval and generation models in human evaluations.
机译:众所周知,对话的序列生成模型存在几个问题:它们倾向于生成简短的,通用的句子,这些句子没有信息性,也没有参与性。另一方面,检索模型可以显示有趣的响应,但仅限于给定的检索集,导致无法将其调整为特定上下文的错误答复。在这项工作中,我们开发了一个模型,该模型结合了两种方法来避免它们的两个缺点:首先检索响应,然后对其进行优化-最终序列生成器将检索作为附加上下文。我们在最近的Con-vAI2挑战任务中展示了我们的方法在人类评估中所产生的响应优于标准检索和生成模型。

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