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Conversing by Reading: Contentful Neural Conversation with On-demand Machine Reading

机译:通过阅读交谈:与按需机器读数的满足性神经谈话

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Although neural conversation models are effective in learning how to produce fluent responses, their primary challenge lies in knowing what to say to make the conversation contentful and non-vacuous. We present a new end-to-end approach to contentful neural conversation that jointly models response generation and on-demand machine reading. The key idea is to provide the conversation model with relevant long-form text on the fly as a source of external knowledge. The model performs QA-style reading comprehension on this text in response to each conversational turn, thereby allowing for more focused integration of external knowledge than has been possible in prior approaches. To support further research on knowledge-grounded conversation, we introduce a new large-scale conversation dataset grounded in external web pages (2.8M turns, 7.4M sentences of grounding). Both human evaluation and automated metrics show that our approach results in more contentful responses compared to a variety of previous methods, improving both the informa-tiveness and diversity of generated output.
机译:虽然神经谈话模型在学习如何产生流利的反应方面是有效的,但他们的主要挑战在于了解如何谈论谈话满足和不受空置。我们提出了一种新的端到端方法,以满足的神经谈话,共同模型响应生成和按需机器读数。关键的想法是提供与相关的长形文本的对话模型作为外部知识的来源。该模型对本文进行了QA样式阅读理解,以响应每个会话转弯,从而允许更专注于外部知识的整合而不是在现有方法中是可能的。为了支持进一步研究知识接地的对话,我们介绍了一个在外部网页的新的大规模对话数据集(2.8米的转弯,7.4米接地句子)。人类评估和自动化指标都表明,与各种先前的方法相比,我们的方法会导致更具满意的响应,从而提高产生输出的信息和多样性。

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