Growing interests have been attracted in Conversational Recommender Systems (CRS), which explore user preference through conversational interactions in order to make appropriate recommendation. However, there is still a lack of ability in existing CRS to (1) traverse multiple reasoning paths over background knowledge to introduce relevant items and attributes, and (2) arrange selected entities appropriately under current system intents to control response generation. To address these issues, we propose CR-Walker in this paper, a model that performs tree-structured reasoning on a knowledge graph, and generates informative dialog acts to guide language generation. The unique scheme of tree-structured reasoning views the traversed entity at each hop as part of dialog acts to facilitate language generation, which links how entities are selected and expressed. Automatic and human evaluations show that CR-Walker can arrive at more accurate recommendation, and generate more informative and engaging responses.
翻译:对话建议系统吸引了越来越多的兴趣,通过对话互动探索用户的偏好,以便提出适当的建议;然而,现有的对话建议系统仍然缺乏能力:(1) 跨越背景知识的多重推理途径,以引入相关项目和属性;(2) 在目前系统的意图下适当安排选定实体,以控制反应生成;为解决这些问题,我们建议本文件采用CR-Walker模式,在知识图上进行树木结构化推理,并生成信息化对话动作,以指导语言生成。树结构化推理方法的独特办法是将每个跳跃的跨跃实体视为对话行为的一部分,以促进语言生成,从而将各实体的选定和表达方式联系起来。自动和人文评估表明,CR-Walker可以提出更准确的建议,并产生更多信息化和参与性的响应。