Study of Machine Learning and Deep Learning Algorithms for the Detection of Email Spam based on Python Implementation

Sahote Tejinder Singh, Madhuri Dinesh Gabhane, C. Mahamuni
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Abstract

Spam is the act of sending unsolicited emails to a large number of users for phishing, spreading malware, etc. Internet Service Providers (ISPs) and email inbox providers (like Gmail, Yahoo Mail, AOL, etc.) rely on SPAM filters, firewalls, and blacklist directories to prevent "unsolicited" SPAM emails from entering your inbox. Spam mails are overrunning email inboxes, which significantly slows down internet performance. It is crucial to properly analyze the connections between these spammers and spam because the majority of us tend to provide them with crucial information, such as our contact information. Since the benefactor covers a large percentage of the costs related to spamming, it effectively serves as advertising for the cost of mailing. The study of existing work shows that machine learning and deep learning are frequently employed to effectively identify email spam. This research paper is secondary work in which we have studied, and implemented the various machine learning and deep learning approaches to identify email spam in Python. The four machine learning algorithms—KNN, Navies Bayes, BiLSTM, and Deep CNN—show that they can be utilized effectively to detect spam. Yet the Deep CNN outperforms the other three based on accuracy and the F1 score.
基于Python实现的垃圾邮件检测的机器学习和深度学习算法研究
垃圾邮件是指向大量用户发送未经请求的电子邮件以进行网络钓鱼、传播恶意软件等行为。互联网服务提供商(isp)和电子邮件收件箱提供商(如bgmail, Yahoo Mail, AOL等)依靠垃圾邮件过滤器,防火墙和黑名单目录来防止“未经请求的”垃圾邮件进入您的收件箱。垃圾邮件淹没了电子邮件收件箱,这大大降低了网络性能。正确分析这些垃圾邮件发送者和垃圾邮件之间的联系是至关重要的,因为我们大多数人倾向于向他们提供关键信息,例如我们的联系信息。由于捐助者承担了与垃圾邮件相关的大部分成本,因此它有效地为邮件成本做了广告。对现有工作的研究表明,机器学习和深度学习经常被用来有效地识别垃圾邮件。这篇研究论文是我们研究并实现了各种机器学习和深度学习方法来识别Python中的垃圾邮件的辅助工作。四种机器学习算法——knn、海军贝叶斯、BiLSTM和深度cnn——表明它们可以有效地用于检测垃圾邮件。然而,基于准确率和F1分数,深度CNN的表现优于其他三种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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