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Active Learning for Online Spam Filtering

机译:在线垃圾邮件过滤的主动学习

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Spam filtering is defined as a task trying to label emails with spam or ham in an online situation. The online feature requires the spam filter has a strong timely generalization and has a high processing speed. Machine learning can be employed to fulfill the two requirements. In this paper, we propose a SVMEL (SVM Ensemble Learning) method to combine five simple filters for higher accuracy and an active learning method to choose training emails for less training time. The experiments results show the filter applying active learning method can reduce requirements of labeled training emails and reach steady-state performance more quickly.
机译:垃圾邮件过滤被定义为在线情况下尝试用垃圾邮件或火腿标记电子邮件的任务。在线功能要求垃圾邮件过滤器具有强大的及时泛化,并具有高处理速度。机器学习可用于满足两个要求。在本文中,我们提出了一个SVMEL(SVM集合学习)方法,将五种简单的过滤器组合以获得更高的准确性和活动学习方法,以便为更少的培训时间选择培训电子邮件。实验结果表明,滤波器应用主动学习方法可以减少标记训练电子邮件的要求,并更快地达到稳态性能。

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