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A Reinforcement Learning-driven Translation Model for Search-Oriented Conversational Systems

机译:面向搜索的会话系统的加强学习驱动转换模型

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Search-oriented conversational systems rely on information needs expressed in natural language (NL). We focus here on the understanding of NL expressions for building keyword-based queries. We propose a reinforcement-learning-driven translation model framework able to 1) learn the translation from NL expressions to queries in a supervised way, and, 2) to overcome the lack of large-scale dataset by framing the translation model as a word selection approach and injecting relevance feedback as a reward in the learning process. Experiments are carried out on two TREC datasets. We outline the effectiveness of our approach.
机译:面向搜索的会话系统依赖于自然语言(NL)表达的信息需求。我们侧重于对构建关键字的查询的NL表达式的理解。我们提出了一个能够为1)的加强学习驱动的翻译模型框架,从NL表达式以监督方式的查询学习翻译,2)通过将翻译模型作为单词选择来克服缺少大规模数据集方法和将相关性反馈注入学习过程中的奖励。实验在两个TREC数据集上进行。我们概述了我们方法的有效性。

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