Existing pipelined task-oriented dialogue systems usually have difficulties adapting to unseen domains, whereas end-to-end systems are plagued by large-scale knowledge bases in practice. In this paper, we introduce a novel query-driven task-oriented dialogue system, namely Q-TOD. The essential information from the dialogue context is extracted into a query, which is further employed to retrieve relevant knowledge records for response generation. Firstly, as the query is in the form of natural language and not confined to the schema of the knowledge base, the issue of domain adaption is alleviated remarkably in Q-TOD. Secondly, as the query enables the decoupling of knowledge retrieval from the generation, Q-TOD gets rid of the issue of knowledge base scalability. To evaluate the effectiveness of the proposed Q-TOD, we collect query annotations for three publicly available task-oriented dialogue datasets. Comprehensive experiments verify that Q-TOD outperforms strong baselines and establishes a new state-of-the-art performance on these datasets.
翻译:现有编审中的任务导向对话系统通常难以适应无形领域,而端对端系统实际上受到大规模知识基础的困扰。本文介绍一个新的由查询驱动的任务导向对话系统,即Q-TOD。对话背景中的基本信息被提取到查询中,进一步用于检索相关知识记录,以生成答复。首先,由于查询的形式是自然语言,不局限于知识基础的架构,域调整问题在Q-TOD中显著缓解。第二,由于查询能够将知识检索从生成中分离出来,Q-TOD摆脱了知识基础可扩展性的问题。为评估拟议的Q-TOD的有效性,我们为三种公开的、面向任务的对话数据集收集了查询说明。全面实验证实,Q-TOD超越了强有力的基线,并在这些数据集上建立了新的最新业绩。