网页搜索引擎点击文档分析

D. Nettleton, Liliana Calderón-Benavides, Ricardo Baeza-Yates
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引用次数: 2

摘要

本文从所选文档(ur)的角度对Web搜索引擎查询和点击数据进行处理和分析。我们首先定义可能的文档类别,并选择描述性变量来定义文档。本文采用传统的统计方法对URL数据集进行预处理和分析,然后采用Kohonen (1984) SOM聚类技术对URL数据集进行处理,得到两级聚类。根据最初定义的文档类别和变量来解释集群。然后应用C4.5 (Quinlan, 1993)规则归纳算法生成文档类别的决策树。本文的目的是对点击数据应用系统的数据挖掘过程,对比非监督(Kohonen)和监督(C4.5)方法对数据进行聚类和建模,以识别与理论用户行为和文档(URL)组织相关的文档概要
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Analysis of Web Search Engine Clicked Documents
In this paper we process and analyze Web search engine query and click data from the perspective of the documents (URs) selected. We initially define possible document categories and select descriptive variables to define the documents. The URL dataset is preprocessed and analyzed using some traditional statistical methods, and then processed by the Kohonen (1984) SOM clustering technique, which we use to produce a two level clustering. The clusters are interpreted in terms of the document categories and variables defined initially. Then we apply the C4.5 (Quinlan, 1993) rule induction algorithm to produce a decision tree for the document category. The objective of the paper is to apply a systematic data mining process to click data, contrasting non-supervised (Kohonen) and supervised (C4.5) methods to cluster and model the data, in order to identify document profiles which relate to theoretical user behavior, and document (URL) organization
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