Scalable multi-domain dialogue state tracking

Abhinav Rastogi, Dilek Z. Hakkani-Tür, Larry Heck
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引用次数: 104

Abstract

Dialogue state tracking (DST) is a key component of task-oriented dialogue systems. DST estimates the user's goal at each user turn given the interaction until then. State of the art approaches for state tracking rely on deep learning methods, and represent dialogue state as a distribution over all possible slot values for each slot present in the ontology. Such a representation is not scalable when the set of possible values are unbounded (e.g., date, time or location) or dynamic (e.g., movies or usernames). Furthermore, training of such models requires labeled data, where each user turn is annotated with the dialogue state, which makes building models for new domains challenging. In this paper, we present a scalable multi-domain deep learning based approach for DST. We introduce a novel framework for state tracking which is independent of the slot value set, and represent the dialogue state as a distribution over a set of values of interest (candidate set) derived from the dialogue history or knowledge. Restricting these candidate sets to be bounded in size addresses the problem of slot-scalability. Furthermore, by leveraging the slot-independent architecture and transfer learning, we show that our proposed approach facilitates quick adaptation to new domains.
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可扩展的多域对话状态跟踪
对话状态跟踪(DST)是面向任务的对话系统的关键组成部分。DST估计用户在每个用户回合之前的交互目标。最先进的状态跟踪方法依赖于深度学习方法,并将对话状态表示为本体中每个槽的所有可能槽值的分布。当可能的值集合是无界的(例如,日期、时间或位置)或动态的(例如,电影或用户名)时,这种表示是不可伸缩的。此外,这种模型的训练需要标记数据,其中每个用户转向都用对话状态进行注释,这使得为新领域构建模型具有挑战性。在本文中,我们提出了一种可扩展的基于多领域深度学习的DST方法。我们引入了一种新的状态跟踪框架,该框架不依赖于槽值集,并将对话状态表示为从对话历史或知识中获得的一组感兴趣值(候选集)的分布。将这些候选集限制为有限的大小可以解决插槽可伸缩性问题。此外,通过利用槽无关架构和迁移学习,我们表明我们提出的方法有助于快速适应新领域。
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