Dialogue State Tracking (DST) is core research in dialogue systems and has received much attention. In addition, it is necessary to define a new problem that can deal with dialogue between users as a step toward the conversational AI that extracts and recommends information from the dialogue between users. So, we introduce a new task - DST from dialogue between users about scheduling an event (DST-USERS). The DST-USERS task is much more challenging since it requires the model to understand and track dialogue states in the dialogue between users and to understand who suggested the schedule and who agreed to the proposed schedule. To facilitate DST-USERS research, we develop dialogue datasets between users that plan a schedule. The annotated slot values which need to be extracted in the dialogue are date, time, and location. Previous approaches, such as Machine Reading Comprehension (MRC) and traditional DST techniques, have not achieved good results in our extensive evaluations. By adopting the knowledge-integrated learning method, we achieve exceptional results. The proposed model architecture combines gazetteer features and speaker information efficiently. Our evaluations of the dialogue datasets between users that plan a schedule show that our model outperforms the baseline model.
翻译:国家对话跟踪(DST)是对话系统的核心研究,受到了很多关注。此外,有必要确定一个能够处理用户之间对话的新问题,作为向从用户之间对话中提取和建议信息的对话AI迈出的一步。因此,我们引入了一项新的任务――从用户之间关于活动时间安排的对话(DST-USERS)中提取的DST。DST-USERS的任务更具挑战性,因为它要求模型理解和跟踪用户之间对话状态,并了解谁提出了时间表,谁同意了拟议的时间表。为了便利DST-USERS的研究,我们开发了规划时间表的用户之间的对话数据集。在对话中需要提取的附加说明的时间档值是日期、时间和地点。以前的方法,如机器阅读兼容(MRC)和传统的DST技术,在我们的广泛评价中没有取得良好的结果。通过采用知识综合学习方法,我们取得了特殊的结果。拟议的模型结构将地名录特征和演讲者信息结合起来。我们对于计划模型的用户之间对话数据集的评估显示我们的模型超越了基线。