利用随机森林识别Twitter垃圾邮件

Humza Haider
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引用次数: 0

摘要

自2006年第一条推文发布以来,推特的使用迅速增长。Twitter上的垃圾邮件发送者数量也出现了类似的增长。将用户划分为垃圾邮件发送者和非垃圾邮件发送者已经得到了大量的研究,新的垃圾邮件检测方法正在迅速发展。其中一种分类技术被称为随机森林。我们研究了三个使用基于用户的特征、地理标记特征和时间相关特征的随机森林的研究。每项研究都显示出较高的准确率和f度量值,只有一个模型例外,该模型的测试集具有相对于典型测试程序更现实的垃圾邮件比例。这些研究表明,随机森林与独特的特征选择相结合,可以用于高精度地识别垃圾邮件和垃圾邮件发送者,但在应用于实际情况时可能存在缺点。
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Identifying Twitter Spam by Utilizing Random Forests
The use of Twitter has rapidly grown since the first tweet in 2006. The number of spammers on Twitter shows a similar increase. Classifying users into spammers and nonspammers has been heavily researched, and new methods for spam detection are developing rapidly. One of these classification techniques is known as random forests. We examine three studies that employ random forests using user based features, geo-tagged features, and time dependent features. Each study showed high accuracy rates and F-measures with the exception of one model that had a test set with a more realistic proportion of spam relative to typical testing procedures. These studies suggest that random forests, in combination with unique feature selection can be used to identify spam and spammers with high accuracy but may have shortcomings when applied to real world situations.
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