混合属性两阶段聚类实体解析

Lei Gang
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引用次数: 0

摘要

记录匹配和聚类是实体分辨过程中必不可少的两个步骤,基于tf-idf(词频-逆文档频率)特征的单一文本相似度聚类往往导致点实体分辨精度不高。本文提出了一种混合属性两阶段聚类实体解析框架(简称MATC-ER),设计了一种利用不同阶段记录信息,将点名和点介绍混合进行相似性度量的方法。通过对旅游景点真实数据的对比实验,验证了该方法的有效性。
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Mixed Attributes Two-Stage-Clustering Entity Resolution
Record matching and clustering are two essential steps in the process of entity resolution, and the single text similarity clustering based on tf-idf (term frequency-inverse document frequency) feature often leads to poor precision in spots entity resolution. The paper outlines a mixed attributes two-stage-clustering entity resolution framework (abbreviated in MATC-ER) and designs an approach to measure the similarity by mixing spot name and spot introduction, which makes good use of the record information at different stages. Then the paper proves its efficiency based on the comparative experiments on the real data of travel spots.
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