Comparison Jaccard similarity, Cosine Similarity and Combined Both of the Data Clustering With Shared Nearest Neighbor Method

L. Zahrotun
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引用次数: 36

Abstract

Text Mining is the excavations carried out by the computer to get something new that comes from information extracted automatically from data sources of different text. Clustering technique itself is a grouping technique that is widely used in data mining. The aim of this study was to find the most optimum value similarity. Jaccard similarity method used similarity, cosine similarity and a combination of Jaccard similarity and cosine similarity. By combining the two similarity is expected to increase the value of the similarity of the two titles. While the document is used only in the form of a title document of practical work in the Department of Informatics Engineering University of Ahmad Dahlan. All these articles have been through the process of preprocessing beforehand. And the method used is the method of document clustering with Shared Nearest Neighbor (SNN). Results from this study is the cosine similarity method gives the best value of proximity or similarity compared to Jaccard similarity and a combination of both
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比较Jaccard相似度、余弦相似度及二者结合的共享近邻聚类方法
文本挖掘是指计算机从不同文本的数据源中自动提取信息,从中获得新的信息而进行的挖掘。聚类技术本身就是一种广泛应用于数据挖掘的分组技术。本研究的目的是寻找最优的价值相似度。Jaccard相似度法采用相似度、余弦相似度和Jaccard相似度与余弦相似度的组合。通过结合两者的相似度,有望增加两个标题的相似度值。而该文件仅以Ahmad Dahlan大学信息工程系实际工作的标题文件的形式使用。所有这些文章都经过了事先的预处理。使用的方法是基于共享近邻(SNN)的文档聚类方法。本研究的结果是余弦相似度方法给出了与Jaccard相似度和两者的组合相比的接近或相似度的最佳值
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