Two types of knowledge, triples from knowledge graphs and texts from documents, have been studied for knowledge aware open-domain conversation generation, in which graph paths can narrow down vertex candidates for knowledge selection decision, and texts can provide rich information for response generation. Fusion of a knowledge graph and texts might yield mutually reinforcing advantages, but there is less study on that. To address this challenge, we propose a knowledge aware chatting machine with three components, an augmented knowledge graph with both triples and texts, knowledge selector, and knowledge aware response generator. For knowledge selection on the graph, we formulate it as a problem of multi-hop graph reasoning to effectively capture conversation flow, which is more explainable and flexible in comparison with previous work. To fully leverage long text information that differentiates our graph from others, we improve a state of the art reasoning algorithm with machine reading comprehension technology. We demonstrate the effectiveness of our system on two datasets in comparison with state-of-the-art models.
翻译:两种知识类型,即知识图和文件文本的三重知识图和文本的三重知识,已经研究用于知识意识的开放域对话生成,其中图表路径可以缩小用于知识选择决定的顶点选择对象,文本可以提供丰富的信息进行响应生成。知识图和文本的融合可以产生相辅相成的优势,但这方面的研究较少。为了应对这一挑战,我们提议了一种知识意识聊天机,有三个组成部分,一个知识强化的、三重文本、知识选择器和知识意识反应生成器的知识图。关于图上的知识选择,我们把它描述成一个多点图推理问题,以有效捕捉到对话流,而与以往的工作相比,后者更能解释,更灵活。为了充分利用长文本信息,使我们的图表与其他图表区别,我们用机器阅读理解技术改进了艺术推理算法的状态。我们展示了我们两个数据集的系统与最新模型相比的有效性。