A Review Article On Enhancing Email Spam Filter’s Accuracy Using Machine Learning

Livingston Jeeva, Ijtaba Saleem Khan
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Abstract

In today’s era, almost everyone is using emails on their daily basis. In our proposed research, we suggest a machine learning-based strategy for enhancing email spam filters' accuracy. Traditional rule-based filters have grown less effective as spam emails have multiplied exponentially. Models can be trained to identify emails as spam or not using machine learning algorithms, particularly supervised learning. We need to create a simple and straightforward machine learning model in order to reach more accurate results while categorizing email spam. We picked the Naive Bayes technique for our model since it is quicker and more accurate than other algorithms. The suggested method can have incorporated into current email systems to enhance spam filtering functionality. This review paper provides an overview of the machine learning model we have suggested.
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利用机器学习提高垃圾邮件过滤准确率的综述
在当今时代,几乎每个人都在日常生活中使用电子邮件。在我们提出的研究中,我们提出了一种基于机器学习的策略来提高电子邮件垃圾邮件过滤器的准确性。随着垃圾邮件的成倍增长,传统的基于规则的过滤器已经变得不那么有效了。可以训练模型来识别电子邮件是垃圾邮件还是不使用机器学习算法,特别是监督学习。我们需要创建一个简单直接的机器学习模型,以便在对垃圾邮件进行分类时获得更准确的结果。我们选择朴素贝叶斯技术作为我们的模型,因为它比其他算法更快、更准确。建议的方法可以纳入当前的电子邮件系统,以增强垃圾邮件过滤功能。这篇综述文章提供了我们建议的机器学习模型的概述。
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