WCOND-mine: algorithm for detecting Web content outliers from Web documents

Malik Agyemang, K. Barker, R. Alhajj
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引用次数: 23

Abstract

Outlier mining is dedicated to finding data objects, which differ significantly from the rest of the data. Outlier mining has been extensively studied in statistics and recently data mining. However, exploring the Web for outliers has received very little attention in the mining community. Web content outliers are documents with 'varying contents ' compared to similar Web documents taken from the same domain. Mining Web content outliers may lead to the identification of competitors and emerging business patterns in electronic commerce. This paper proposes WCOND-mine algorithm for mining Web content outliers using n-grams without a domain dictionary. Experimental results with embedded motifs show that WCOND-mine is capable of finding Web content outliers from Web datasets.
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WCOND-mine:从Web文档中检测Web内容异常值的算法
离群值挖掘专门用于查找与其他数据有显著差异的数据对象。离群值挖掘在统计学和最近的数据挖掘中得到了广泛的研究。然而,在Web上探索异常值在采矿社区中很少受到关注。Web内容异常值是与来自同一域的类似Web文档相比具有“不同内容”的文档。挖掘Web内容异常值可能导致识别电子商务中的竞争对手和新兴业务模式。本文提出了一种利用n-图挖掘Web内容异常值的WCOND-mine算法。嵌入主题的实验结果表明,WCOND-mine能够从Web数据集中发现Web内容的异常值。
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