基于主题模型的知识图实体相似度度量

Haoran Sun, Rui Ren, Hongming Cai, Boyi Xu, Yonggang Liu, Tongyu Li
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引用次数: 3

摘要

实体相似度度量是学术检索和推荐的基础工作。为了分析和度量实体之间的相似度,现有的方法主要是片面地基于文本内容或关系。因此,他们不能衡量论文和学者之间的相似性,或者局限于小范围的领域。为了解决这个问题,我们提出了一个利用论文文本内容和实体之间关系的主题模型,然后引入了一种基于主题模型增强的知识图的图实体之间相似度计算算法。实验表明,该模型在主题一致性方面优于传统的主题模型,能够更准确地同时列出相似的论文、学者和会议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic Model Based Knowledge Graph for Entity Similarity Measuring
Entity similarity measuring is the basic work of academic search and recommendation. To analyze and measure the similarity among entities, existing methods are mainly based on either textual content or relationship unilaterally. Thus they can not measure similarity between paper and scholar or are limited in a small range of field. To address this, we propose a topic model, utilizing both textual content of papers and relationship between entities, and then introduce an algorithm for computing similarity between graph entities based on knowledge graph enhanced by topic model. Through the experiments we show that our model outperforms traditional topic model in topic coherence and we are able to list similar papers, scholars and conferences simultaneously and more accurately.
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