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Interactive Question Clarification in Dialogue via Reinforcement Learning

机译:通过加强学习互动问澄清对话

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Coping with ambiguous questions has been a perennial problem in real-world dialogue systems. Although clarification by asking questions is a common form of human interaction, it is hard to define appropriate questions to elicit more specific intents from a user. In this work, we propose a reinforcement model to clarify ambiguous questions by suggesting refinements of the original query. We first formulate a collection partitioning problem to select a set of labels enabling us to distinguish potential unambiguous intents. We list the chosen labels as intent phrases to the user for further confirmation. The selected label along with the original user query then serves as a refined query, for which a suitable response can more easily be identified. The model is trained using reinforcement learning with a deep policy network. We evaluate our model based on real-world user clicks and demonstrate significant improvements across several different experiments.
机译:应对含糊不清的问题一直是现实世界对话系统的常年问题。 虽然通过提出问题澄清是一种常见的人类互动形式,但很难确定适当的问题,以引起来自用户的更多特定意图。 在这项工作中,我们提出了一种强化模型,通过建议原始查询的改进来阐明含糊不清的问题。 我们首先制定一个集合分区问题,以选择一组标签,使我们能够区分潜在的明确意图。 我们将所选择的标签列为用户的意图短语,以进一步确认。 然后,所选标签以及原始用户查询的标签用作精制查询,可以更容易地识别适当的响应。 该模型采用了深度策略网络的强化学习培训。 我们根据真实的用户点击评估我们的模型,并在几个不同的实验中表现出显着的改进。

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