基于不同技术的现有垃圾邮件过滤方法综述

Lipsa Das, Laxmi Ahuja, A. Pandey
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摘要

今天,社交媒体和电子邮件已经成为一种非常普遍和最有效的通信和数据传输媒介,这已经受到不受欢迎的垃圾邮件的极大影响,这些垃圾邮件通过向互联网用户分享不想要的和恶意的内容,给组织带来经济损失,也成为个人用户的头痛问题,并导致生产力大幅下降。当垃圾邮件中含有病毒和恶意代码时,不仅占用存储空间和通信带宽,而且对网络构成威胁。互联网用户平均每天会收到10-20封垃圾邮件。为了解决垃圾邮件问题,需要部署不同的对抗措施来检测和删除这些不需要的消息。本文总结了不同的现有垃圾邮件过滤技术的调查,例如如何使用机器和非机器学习方法来检测传入的未经请求的电子邮件。每种过滤方法都有自己的优点和缺点。然而,考虑到不同类型的垃圾邮件过滤器的要求,本文对各种垃圾邮件过滤技术进行了分类和比较,并重点讨论了各种现有技术的准确率。
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Existing Spam Filtering Methods Considering different technique: A review
Today, social media and email are become a very common and the most effective medium for communication and data transferring which has been greatly affected by undesired spam by sharing unwanted and malicious contents to Internet users which, brings financial losses to organizations as well as become a headache for individual users and leads to decrease in productivity considerably. The spam occupies storage and the communication bandwidth as well as a network threat, when it contains viruses and malicious codes. On an average a user on internet may get 10-20 spam emails per day. For solving spam problems, different counter measures need to deploy to detect and remove these unwanted messages. This paper summarizes the survey of different existing email spam filtering techniques such as how machine and non-machine learning approaches are used to detect incoming unsolicited emails. Each filtering method has their own benefits and demerits. Considering upon the requirements different kind of spam filters, however, here in this research paper, we present the classification, and comparison of various spam email filtering techniques and focusing on the accuracy rate of various existing techniques.
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