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An End-to-End Neural Dialog State Tracking for Task-Oriented Dialogs

机译:面向任务的对话框的端到端神经对话框状态跟踪

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Dialog state tracking in spoken dialog system is the task that tracks the flow of a dialog and grasps what a user wants from the utterance precisely. Since the dialog success is related to catching the want of the user, dialog state tracking is a necessary component for spoken dialog systems. This paper proposes a neural dialog state tracker with the attention mechanism for focusing on valuable words and the hierarchical softmax for efficient training of the tracker. In addition, the proposed tracker combines a natural language understanding module and a dialog state module in an end-to-end style. As a result, the error propagation within a dialog system is minimized. To prove the effectiveness of the proposed model, we do experiments on dialog state tracking in the human-human task-oriented dialogs. Our experimental results show that the proposed method outperforms both the neural tracker without the attention mechanism and that without the hierarchical softmax.
机译:口语对话系统中的对话状态跟踪是一项任务,该任务跟踪对话的流程并精确地把握用户从话语中想要的东西。由于对话的成功与满足用户的需求有关,因此对话状态跟踪是口语对话系统的必要组成部分。本文提出了一种神经对话状态跟踪器,该跟踪器具有关注机制,可将注意力集中在有价值的单词上,而分层softmax可有效地跟踪跟踪器。另外,所提出的跟踪器以端到端的方式结合了自然语言理解模块和对话状态模块。结果,对话系统内的错误传播被最小化。为了证明所提模型的有效性,我们在面向人与人的面向任务的对话框中进行了对话框状态跟踪的实验。我们的实验结果表明,所提出的方法在不具有注意力机制和没有分层softmax的情况下均优于神经跟踪器。

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