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Amalgamating Knowledge from Two Teachers for Task-oriented Dialogue System with Adversarial Training

机译:两位教师的合并知识,以对抗对抗对话系统进行对抗性培训

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The challenge of both achieving task completion by querying the knowledge base and generating human-like responses for task-oriented dialogue systems is attracting increasing research attention. In this paper, we propose a "Two-Teacher One-Student" learning framework (TTOS) for task-oriented dialogue, with the goal of retrieving accurate KB entities and generating human-like responses simultaneously. TTOS amalgamates knowledge from two teacher networks that together provide comprehensive guidance to build a high-quality task-oriented dialogue system (student network). Each teacher network is trained via reinforcement learning with a goal-specific reward, which can be viewed as an expert towards the goal and transfers the professional characteristic to the student network. Instead of adopting the classic student-teacher learning of forcing the output of a student network to exactly mimic the soft targets produced by the teacher networks, we introduce two discriminators as in generative adversarial network (GAN) to transfer knowledge from two teachers to the student. The usage of discriminators relaxes the rigid coupling between the student and teachers. Extensive experiments on two benchmark datasets (i.e., CamRest and In-Car Assistant) demonstrate that TTOS significantly outperforms baseline methods.
机译:通过查询知识库和为任务导向的对话系统产生人类的对话系统的人类响应来实现任务完成的挑战是吸引了越来越多的研究关注。在本文中,我们提出了一个“双老师一学生”学习框架(TTO),用于面向任务对话,其目标是检索准确的KB实体并同时生成人类的响应。 TTOS合并来自两个教师网络的知识,共同提供全面的指导,以建立一个高质量的面向任务的对话系统(学生网络)。每个教师网络都通过强化学习培训,具有特定于目标的奖励,可以被视为目标的专家,并将专业特征转移到学生网络。而不是采用经典的学生 - 教师学习迫使学生网络的输出完全模仿教师网络产生的软目标,我们介绍了两种鉴别者,如生成的对抗网络(GAN),以将来自两位教师的知识转移给学生。鉴别者的使用放松了学生和教师之间的僵硬耦合。在两个基准数据集(即,Camrest和In-Car助理)上进行了广泛的实验证明TTO显着优于基线方法。

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