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From Machine Reading Comprehension to Dialogue State Tracking: Bridging the Gap

机译:从机器阅读理解到对话状态跟踪:弥补差距

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Dialogue state tracking (DST) is at the heart of task-oriented dialogue systems. However, the scarcity of labeled data is an obstacle to building accurate and robust state tracking systems that work across a variety of domains. Existing approaches generally require some dialogue data with state information and their ability to generalize to unknown domains is limited. In this paper, we propose using machine reading comprehension (RC) in state tracking from two perspectives: model architectures and datasets. We divide the slot types in dialogue state into categorical or extractive to borrow the advantages from both multiple-choice and span-based reading comprehension models. Our method achieves near the current state-of-the-art in joint goal accuracy on Mul-tiWOZ 2.1 given full training data. More importantly, by leveraging machine reading comprehension datasets, our method outperforms the existing approaches by many a large margin in few-shot scenarios when the availability of in-domain data is limited. Lastly, even without any state tracking data, i.e., zero-shot scenario, our proposed approach achieves greater than 90% average slot accuracy in 12 out of 30 slots in MultiWOZ 2.1.
机译:对话状态跟踪(DST)位于面向任务为导向的对话系统的核心。然而,标记数据的稀缺是构建跨各个域的准确和强大的状态跟踪系统的障碍。现有方法通常需要一些与状态信息的对话数据,并且它们概括到未知域的能力是有限的。在本文中,我们在两个视角下使用机器阅读理解(RC)在状态跟踪中:模型架构和数据集。我们将对话状态划分为分类或提取的插槽类型,以借用多项选择和基于跨度的阅读理解模型的优势。我们的方法在MUL-TIWOZ 2.1上的联合目标准确性附近达到了当前的最先进,给出了完整的培训数据。更重要的是,通过利用机器阅读理解数据集,当域数据的可用性有限时,我们的方法在很多镜头方案中的许多大型余量优于现有方法。最后,即使没有任何状态跟踪数据,即零射击场景,我们所提出的方法也在多个频率2.1中的30个插槽中实现大于90%的平均槽精度。

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