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Binary Cybergenre Classification Using Theoretic Feature Measures

机译:使用理论特征措施分类二元网络创新分类

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In this study, we conducted an investigation on automatic genre classification for three common types of web pages addressing the effect of three theoretic feature selection measures, a range of feature set size, and three machine classifiers on the accuracy of the web page classification in the context of a set of controlled experiments. Our results are encouraging and we conclude that for binary classification tasks, at least for these web page genres, it is possible to reach satisfying results with small content-based feature sets generated with a sound feature selection measure and furthermore there is no evidence of interaction between these feature selection measures and the machine classifiers used.
机译:在这项研究中,我们对三个常见类型的网页进行了自动流派分类的调查,解决了三种理论特征选择措施,一系列特征集大小和三台机器分类器的效果,以及网页分类的准确性一套受控实验的背景。我们的结果令人鼓舞,我们得出结论,对于二进制分类任务,至少对于这些网页流派,可以通过声音特征选择测量产生的小内容的特征集来达到满足结果,此外没有交互的证据在这些特征选择措施和使用的机器分类器之间。

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