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Learning to Filter Junk E-Mail from Positive and Unlabeled Examples

机译:学习从积极和未标记的例子过滤垃圾电子邮件

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We study the applicability of partially supervised text classification to junk mail filtering, where a given set of junk messages serve as positive examples while the messages received by a user are unlabeled examples, but there are no negative examples. Supplying a junk mail filter with a large set of junk mails could result in an algorithm that learns to filter junk mail without user intervention and thus would significantly improve the usability of an e-mail client. We study several learning algorithms that take care of the unlabeled examples in different ways and present experimental results.
机译:我们研究部分监督的文本分类对垃圾邮件过滤的适用性,其中给定的一组垃圾邮件作为正示例,而用户接收的消息是未标记的示例,但没有否定示例。 提供具有大量垃圾邮件的垃圾邮件过滤器可能导致算法,该算法学习在没有用户干预的情况下过滤垃圾邮件,因此将显着提高电子邮件客户端的可用性。 我们研究了几种学习算法,以不同的方式处理未标记的例子和实验结果。

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