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Intention Detection Based On Bert-Bilstm in Taskoriented Dialogue System

机译:面向任务的对话系统中基于Bert-Bilstm的意图检测

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As an important module of intelligent dialogue system, intention detection has become an important research direction of man-machine dialogue at present. However, in the taskoriented dialogue, there are still problems that users’ intention detection accuracy is low because of users’ non-standard expression and excessive implied intentions. In order to solve the above problem, this paper proposes to use BERT launched by Google as a pre-training model, and use BiLSTM to build intention detection model of the task-oriented human-machine dialogue. With the Cambridge University Restaurant Reservation Corpus as the dataset, the accuracy of the intention detection model can reach 92.39% finally. Which provides a feasible solution for detecting users’ intention in task-oriented man-machine dialogue system.
机译:意图检测作为智能对话系统的重要模块,已成为当前人机对话的重要研究方向。然而,在面向任务的对话中,仍然存在由于用户的非标准表达和过多的隐含意图而导致用户的意图检测准确性较低的问题。为了解决上述问题,本文提出使用谷歌推出的BERT作为预训练模型,并使用BiLSTM建立面向任务的人机对话的意图检测模型。以剑桥大学餐厅预订语料库为数据集,意图检测模型的准确性最终可以达到92.39%。在面向任务的人机对话系统中,为检测用户的意图提供了可行的解决方案。

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