基于神经网络和贝叶斯分类器的反垃圾邮件过滤

Yue Yang, S. Elfayoumy
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引用次数: 34

摘要

电子邮件无疑是当今使用最广泛的互联网技术。由于互联网能够处理大量的信息和速度,电子邮件和其他在线通信系统已经彻底改变了通信方式。然而,一些计算机用户滥用了用于驱动这些通信的技术,通过发送成千上万的垃圾邮件,除了增加流量或减少带宽之外几乎没有目的。本文评价了基于前馈反向传播神经网络和贝叶斯分类器的电子邮件分类器的有效性。使用准确性和灵敏度指标评估结果。结果表明,前馈反向传播网络算法分类器具有较高的准确率和灵敏度,可以与目前已知的分类器相媲美。另一方面,虽然贝叶斯分类器不那么准确,但它们非常容易构建,并且可以很容易地适应垃圾邮件模式的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anti-Spam Filtering Using Neural Networks and Baysian Classifiers
Electronic mail is inarguably the most widely used Internet technology today. With the massive amount of information and speed the Internet is able to handle, communication has been revolutionized with email and other online communication systems. However, some computer users have abused the technology used to drive these communications, by sending out thousands and thousands of spam emails with little or no purpose other than to increase traffic or decrease bandwidth. This paper evaluates the effectiveness of email classifiers based on the feedforward backpropagation neural network and Baysian classifiers. Results are evaluated using accuracy and sensitivity metrics. The results show that the feedforward backpropagation network algorithm classifier provides relatively high accuracy and sensitivity that makes it competitive to the best known classifiers. On the other hand, though Baysian classifiers are not as accurate they are very easy to construct and can easily adapt to changes in spam patterns.
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