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A Two-Step Neural Dialog State Tracker for Task-Oriented Dialog Processing

机译:面向任务的对话框处理的两步神经对话框状态跟踪器

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摘要

Dialog state tracking in a spoken dialog system is the task that tracks the flow of a dialog and identifies accurately what a user wants from the utterance. Since the success of a dialog is influenced by the ability of the system to catch the requirements of the user, accurate state tracking is important for spoken dialog systems. This paper proposes a two-step neural dialog state tracker which is composed of an informativeness classifier and a neural tracker. The informativeness classifier which is implemented by a CNN first filters out noninformative utterances in a dialog. Then, the neural tracker estimates dialog states from the remaining informative utterances. The tracker adopts the attention mechanism and the hierarchical softmax for its performance and fast training. To prove the effectiveness of the proposed model, we do experiments on dialog state tracking in the human-human task-oriented dialogs with the standard DSTC4 data set. Our experimental results prove the effectiveness of the proposed model by showing that the proposed model outperforms the neural trackers without the informativeness classifier, the attention mechanism, or 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准确识别用户从话语中想要什么。由于对话成功与否取决于系统满足用户需求的能力,因此准确的状态跟踪对于口语对话系统很重要。提出了一种由信息分类器和神经跟踪器组成的两步​​神经对话状态跟踪器。由CNN实施的信息分类器首先过滤掉对话中的非信息性话语。然后,神经跟踪器根据剩余的提示性语音估计对话状态。跟踪器采用注意力机制和分层softmax进行性能和快速训练。为了证明所提出模型的有效性,我们在具有标准DSTC4数据集的人机对话中进行了对话状态跟踪实验。我们的实验结果表明,在没有信息分类器,注意力机制或层次softmax的情况下,该模型优于神经跟踪器,从而证明了该模型的有效性。

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