文章詳目資料

International Journal of Computational Linguistics And Chinese Language Processing THCI

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篇名 Feature Weighting Random Forest for Detection of Hidden Web Search Interfaces
卷期 13:4
作者 Ye, YunmingLi, HongboDeng, XiaobaiHuang, Joshua-zhexue
頁次 387-404
關鍵字 Search Interface DetectionForm ClassificationHidden WebRandom ForestTHCI Core
出刊日期 200812

中文摘要

英文摘要

Search interface detection is an essential task for extracting information from the hidden Web. The challenge for this task is that search interface data is represented in high-dimensional and sparse features with many missing values. This paper presents a new multi-classifier ensemble approach to solving this problem. In this approach, we have extended the random forest algorithm with a weighted feature
selection method to build the individual classifiers. With this improved random forest algorithm (IRFA), each classifier can be learned from a weighted subset of the feature space so that the ensemble of decision trees can fully exploit the useful features of search interface patterns. We have compared our ensemble approach with other well-known classification algorithms, such as SVM, C4.5, Naive Bayes, and original random forest algorithm (RFA). The experimental results have shown
that our method is more effective in detecting search interfaces of the hidden Web.

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