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Chinese Spam Filter Based on Relaxed Online Support Vector Machine

机译:基于轻松的在线支持向量机的中国垃圾邮件过滤器

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Spam filtering is a classical online learning problem. When the size of training sample set becomes larger and larger, the speed of Online SVM is becoming slower and slower. Therefore, we relax the constraints of Online SVM and get the Relaxed Online SVM (ROSVM) model, which can not only improve the speed, but also can ensure the performance. In this paper, we applied this model to Chinese spam filter. Our model outperforms the best system of TREC 2006 Chinese spam filter track. Our filter also participated in the SEWM 2010 spam filter track, and got the best 1-ROCA% of the delayed feedback task and the active learning task.
机译:垃圾邮件过滤是一个经典的在线学习问题。当训练样本集的尺寸变大而较大时,在线SVM的速度变得更慢和较慢。因此,我们放宽在线SVM的约束,并获得轻松的在线SVM(ROSVM)模型,不仅可以提高速度,而且可以保证性能。在本文中,我们将此模型应用于中国垃圾邮件过滤器。我们的模型优于TREC 2006中国垃圾邮件滤镜的最佳系统。我们的过滤器还参与了SEWM 2010垃圾邮件过滤器轨道,并获得了延迟反馈任务的最佳1-ROCA%和主动学习任务。

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