利用大规模知识图谱在食物偏好访谈系统中生成问题

Jie Zeng, Y. Nakano
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引用次数: 7

摘要

本文提出了一个通过对话获取用户食物偏好的对话系统。首先,我们提出了一种基于大型知识图谱Freebase的相关主题选择和问题生成方法。为了选择相关的主题,我们使用维基百科语料库创建了一个主题嵌入模型来表示主题之间的相关性。对于Freebase中缺失的实体,采用知识图嵌入的方法进行知识补全。我们将这些功能整合到一个对话系统中,并进行了用户研究。结果表明,该对话系统能更有效地引出与食物相关的词和常用名词,且这些词在词嵌入空间中具有高度的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting a Large-scale Knowledge Graph for Question Generation in Food Preference Interview Systems
This paper presents a dialogue system that acquires user's food preference through a conversation. First, we proposed a method for selecting relevant topics and generating questions based on Freebase, a large-scale knowledge graph. To select relevant topics, using the Wikipedia corpus, we created a topic-embedding model that represents the correlation among topics. For missing entities in Freebase, knowledge completion was applied using knowledge graph embedding. We incorporated these functions into a dialogue system and conducted a user study. The results reveal that the proposed dialogue system more efficiently elicited words related to food and common nouns, and these words were highly correlated in a word embedding space.
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