Current task-oriented dialog (TOD) systems mostly manage structured knowledge (e.g. databases and tables) to guide the goal-oriented conversations. However, they fall short of handling dialogs which also involve unstructured knowledge (e.g. reviews and documents). In this paper, we formulate a task of modeling TOD grounded on a fusion of structured and unstructured knowledge. To address this task, we propose a TOD system with semi-structured knowledge management, SeKnow, which extends the belief state to manage knowledge with both structured and unstructured contents. Furthermore, we introduce two implementations of SeKnow based on a non-pretrained sequence-to-sequence model and a pretrained language model, respectively. Both implementations use the end-to-end manner to jointly optimize dialog modeling grounded on structured and unstructured knowledge. We conduct experiments on the modified version of MultiWOZ 2.1 dataset, where dialogs are processed to involve semi-structured knowledge. Experimental results show that SeKnow has strong performances in both end-to-end dialog and intermediate knowledge management, compared to existing TOD systems and their extensions with pipeline knowledge management schemes.
翻译:目前的任务导向对话(TOD)系统主要管理结构化知识(例如数据库和表格),以指导目标导向的对话;然而,它们还不足以处理包含非结构化知识(例如审查和文件)的对话;在本文件中,我们根据结构化和无结构化知识的融合,制定了一个模拟TOD的任务;为完成这项任务,我们提议了一个半结构化知识管理的TOD系统,SeKnow,它将信仰状态扩大到管理有结构化和无结构化内容的知识;此外,我们引入了两个SeKnow实施项目,分别基于非预先培训的序列到序列模式和预先培训的语言模式。两个实施项目都使用端到端方式,共同优化基于结构化和无结构化知识的对话模式。我们进行了多WOZ 2.1数据集的修改版试验,其中的对话处理涉及半结构化知识。实验结果表明,SeKnow与现有的TOD系统及其与管道知识管理计划的扩展相比,在端端端端对端对话和中间知识管理中都有很强的业绩。