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Rough set Based Ensemble Classifier for Web Page Classification

机译:基于粗糙集的集成分类器用于网页分类

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摘要

Combining the results of a number of individually trained classification systems to obtain a more accurate classifier is a widely used technique in pattern recognition. In this article, we have introduced a rough set based meta classifier to classify web pages. The proposed method consists of two parts. In the first part, the output of every individual classifier is considered for constructing a decision table. In the second part, rough set attribute reduction and rule generation processes are used on the decision table to construct a meta classifier. It has been shown that (1) the performance of the meta classifier is better than the performance of every constituent classifier and, (2) the meta classifier is optimal with respect to a quality measure defined in the article. Experimental studies show that the meta classifier improves accuracy of classification uniformly over some benchmark corpora and beats other ensemble approaches in accuracy by a decisive margin, thus demonstrating the theoretical results. Apart from this, it reduces the CPU load compared to other ensemble classification techniques by removing redundant classifiers from the combination.
机译:结合多个单独训练的分类系统的结果以获得更准确的分类器是模式识别中广泛使用的技术。在本文中,我们介绍了一种基于粗糙集的元分类器对网页进行分类。所提出的方法包括两部分。在第一部分中,将考虑每个分类器的输出以构建决策表。在第二部分中,在决策表上使用粗糙集属性约简和规则生成过程来构造元分类器。已经表明,(1)元分类器的性能优于每个组成分类器的性能,并且(2)对于本文中定义的质量度量,元分类器是最佳的。实验研究表明,元分类器在某些基准语料库上均匀地提高了分类的准确性,并且在决定性方面领先于其他整体方法,从而证明了理论结果。除此之外,与其他整体分类技术相比,它通过从组合中删除冗余分类器来减少CPU负载。

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