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Using Sociolinguistic Inspired Features for Gender Classification of Web Authors

机译:使用社会语言启发的功能对网络作者进行性别分类

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In this article we present a methodology for classification of text from web authors, using sociolinguistic inspired text features. The proposed methodology uses a baseline text mining based feature set, which is combined with text features that quantify results from theoretical and sociolinguistic studies. Two combination approaches were evaluated and the evaluation results indicated a significant improvement in both combination cases. For the best performing combination approach the accuracy was 84.36%, in terms of percentage of correctly classified web posts.
机译:在本文中,我们介绍了一种使用社会语言启发的文本功能对网络作者的文本进行分类的方法。所提出的方法使用基于基线文本挖掘的功能集,该功能集与可量化理论和社会语言学研究结果的文本功能结合在一起。对两种组合方法进行了评估,评估结果表明在两种组合情况下都有显着改善。对于性能最佳的组合方法,按照正确分类的Web帖子的百分比,准确性为84.36%。

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