基于邻居概率Naïve贝叶斯算法的垃圾邮件分类

P. Anitha, C. Rao, S. Babu
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引用次数: 6

摘要

电子垃圾邮件是电子垃圾邮件的一种,是当今互联网面临的诸多挑战中较为棘手的问题。垃圾邮件大多是出于商业目的而发送的,其中一些邮件可能包含恶意软件链接,导致网络钓鱼网站。本研究的目的是用一种优化的、高效的分类技术对垃圾邮件和垃圾邮件进行分类。Ham持有的电子邮件是合法的或合法有效的信息,可以被用户接受。垃圾邮件是用户不想要的电子邮件,用户想要摆脱它。本研究的重点是在训练要求最低的情况下,将所有邮件分类为这两组,并且准确率达到100%。在本研究中,改进的Naïve贝叶斯(MNB)分类器以极低的训练率保证了要求,并且比现有的Naïve贝叶斯(NB)或支持向量机(SVM)分类器产生更准确的结果。
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Email spam classification using neighbor probability based Naïve Bayes algorithm
Email spam is a kind of electronic spam, which tends to be a more difficult problem nowadays among all internet challenges. Spam mails are mostly sent in commercial purpose, some of them may contain malware links that lead to phishing websites. The aim of this study is to classify into ham and spam emails with an optimized and well efficient classification technique. Ham holds emails that are legitimate or legally valid message can get accepted by users. Spam emails are unwanted emails that a user doesn't want and to get rid of it. This study emphasizes on the improvement in classifying all mails into these two groups with minimal requirement of training and with an accuracy of hundred percent. Here in this study, Modified Naïve Bayes (MNB) classifier ensured the requirements with very low percentage of training and produces accurate results than existing Naïve Bayes (NB) or Supporting Vector Machine (SVM) classifier.
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