基于机器学习技术的监督学习垃圾邮件分类

Ms. D. Karthika Renuka, Dr. T. Hamsapriya, Mr. M. Raja Chakkaravarthi, Ms. P. Lakshmi Surya
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引用次数: 62

摘要

电子邮件是最流行和最常用的通信方式之一,因为它在全球范围内都可以访问,消息传输相对较快,发送成本较低。电子邮件协议的缺陷以及电子商务和金融交易数量的增加直接导致了基于电子邮件的威胁的增加。垃圾邮件是当今互联网的主要问题之一,给公司带来了经济损失,也惹恼了个人用户。垃圾邮件在未经用户同意的情况下侵入用户并填满他们的邮箱。它们消耗更多的网络容量以及检查和删除垃圾邮件的时间。绝大多数互联网用户直言不讳地表示他们对垃圾邮件的鄙视,尽管他们中有足够多的人对商业报价做出回应,认为垃圾邮件仍然是垃圾邮件发送者的一个可行的收入来源。虽然大多数用户都希望正确思考以避免和摆脱垃圾邮件,但他们需要明确而简单的行为准则。尽管采取了各种措施来消除垃圾邮件,但它们仍未根除。另外,如果对策过于敏感,即使是合法的电子邮件也会被删除。在各种阻止垃圾邮件的方法中,过滤是最重要的技术之一。垃圾邮件过滤的许多研究都集中在更复杂的分类器相关问题上。近年来,机器学习对垃圾邮件分类是一个重要的研究课题。所提出的工作的有效性是探索和确定使用不同的学习算法来从电子邮件中分类垃圾邮件。并对各种算法进行了比较分析。
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Spam Classification Based on Supervised Learning Using Machine Learning Techniques
E-mail is one of the most popular and frequently used ways of communication due to its worldwide accessibility, relatively fast message transfer, and low sending cost. The flaws in the e-mail protocols and the increasing amount of electronic business and financial transactions directly contribute to the increase in e-mail-based threats. Email spam is one of the major problems of the today‟s Internet, bringing financial damage to companies and annoying individual users. Spam emails are invading users without their consent and filling their mail boxes. They consume more network capacity as well as time in checking and deleting spam mails. The vast majority of Internet users are outspoken in their disdain for spam, although enough of them respond to commercial offers that spam remains a viable source of income to spammers. While most of the users want to do right think to avoid and get rid of spam, they need clear and simple guidelines on how to behave. In spite of all the measures taken to eliminate spam, they are not yet eradicated. Also when the counter measures are over sensitive, even legitimate emails will be eliminated. Among the approaches developed to stop spam, filtering is the one of the most important technique. Many researches in spam filtering have been centered on the more sophisticated classifier-related issues. In recent days, Machine learning for spam classification is an important research issue. The effectiveness of the proposed work is explores and identifies the use of different learning algorithms for classifying spam messages from e-mail. A comparative analysis among the algorithms has also been presented.
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