基于HTML标签重要性的特征选择算法

A. Sarhan, Ghada M. Hamissa, Heba E. Elbehiry
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引用次数: 2

摘要

传统上,在Web爬行中,从HTML页面的整个内容中提取所需的特性。然而,一个词在HTML标签中的位置表明了它在网页中的重要性。本研究针对HTML网页的特征选择阶段提出了两个思路。第一个想法是通过简单地从HTML页面中的重要标记中提取特征来减少特征,从而实现更快的分类。第二个想法是为每个重要标签赋予权重。基于这些思想,本文提出了两种算法:1)仅重要HTML标签算法,2)加权仅重要HTML标签算法。选择的特征使用文献中两个著名的分类器进行分类:支持向量机(SVM)和Naïve贝叶斯分类器(NBC)。计算了每种算法的精度。将传统的基于HTML页面整体内容的特征选择方法与本文提出的算法的准确率进行了比较。进行了完整的评估,表明使用我们的技术是有效的。实验结果表明,与基于关键字的搜索相比,本文提出的算法提高了搜索的查全率和查全率。这些算法是用JAVA及其扩展包实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Selection algorithms based on HTML tags importance
Traditionally in Web crawling, the required features are extracted from the whole contents of HTML pages. However, the position which a word is located inside the HTML tags indicates its importance in the web page. This research proposes two ideas concerning the Feature Selection stage in HTML web pages. The first idea reduces the features by simply extracting them from the important tags in an HTML page in order to achieve faster classification. The second idea gives weights for each of the important tags. Two algorithms are presented in this paper based on these ideas: i) Important HTML tags only algorithm, ii) Weighted Important HTML tags only algorithm. The selected features are classified using two famous classifiers in the literature: Support Vector Machine (SVM) and Naïve Bayes classifier (NBC). The accuracy of each algorithm is computed. Comparison between the accuracies of traditional feature selection method, which uses the whole contents of HTML page, and the proposed algorithms is performed. Complete evaluation is performed which indicates the effectiveness of using our technique. The experimental results show improved precision and recall with the proposed algorithms with respect to keyword-based search. The algorithms are implemented in JAVA and its extended packages.
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