As an essential component in task-oriented dialogue systems, dialogue state tracking (DST) aims to track human-machine interactions and generate state representations for managing the dialogue. Representations of dialogue states are dependent on the domain ontology and the user's goals. In several task-oriented dialogues with a limited scope of objectives, dialogue states can be represented as a set of slot-value pairs. As the capabilities of dialogue systems expand to support increasing naturalness in communication, incorporating dialogue act processing into dialogue model design becomes essential. The lack of such consideration limits the scalability of dialogue state tracking models for dialogues having specific objectives and ontology. To address this issue, we formulate and incorporate dialogue acts, and leverage recent advances in machine reading comprehension to predict both categorical and non-categorical types of slots for multi-domain dialogue state tracking. Experimental results show that our models can improve the overall accuracy of dialogue state tracking on the MultiWOZ 2.1 dataset, and demonstrate that incorporating dialogue acts can guide dialogue state design for future task-oriented dialogue systems.
翻译:作为注重任务的对话系统的一个基本组成部分,对话状态跟踪(DST)旨在跟踪人与机器的互动,并产生国家代表来管理对话。对话国的代表权取决于本体学领域和用户的目标。在几个任务导向的对话中,对话国可以作为一组时间档价值对等形式。随着对话系统的能力扩大,以支持提高通信的自然性,将对话行为处理纳入对话模式设计就变得至关重要。这种考虑的缺乏限制了对话国对话跟踪模式的可扩展性,使其具有具体目标和本体学。为了解决这一问题,我们制定并纳入对话行为,并利用机器阅读理解方面的最新进展预测多部对话状态跟踪的绝对和非分类类型。实验结果显示,我们的模式可以提高对话国跟踪多功能区2.1数据集的总体准确性,并表明纳入对话行为可以指导未来任务导向的对话系统的对话状态设计。