利用机器学习方法对垃圾邮件进行分类的综合评述

Prachi Bhatnagar, S. Degadwala
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引用次数: 0

摘要

这篇综合评论深入探讨了垃圾邮件分类领域,仔细研究了在与不受欢迎的电子邮件通信的持续斗争中采用的各种机器学习方法的功效。本文综合了大量的研究成果、方法和性能指标,从整体上探讨了垃圾邮件检测领域不断发展的前景。本文强调了机器学习在应对垃圾邮件动态特性方面的关键作用,探讨了诸如 Naive Bayes、支持向量机和神经网络等流行算法的优势和局限性。此外,报告还探讨了特征工程、数据集特征和不断演变的威胁,为该领域的挑战和机遇提供了深刻见解。本综述以最新进展和新兴趋势为重点,旨在指导研究人员、从业人员和开发人员不断追求稳健、适应性强的电子邮件垃圾邮件分类系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Review on Email Spam Classification with Machine Learning Methods
This comprehensive review delves into the realm of email spam classification, scrutinizing the efficacy of various machine learning methods employed in the ongoing battle against unwanted email communication. The paper synthesizes a wide array of research findings, methodologies, and performance metrics to provide a holistic perspective on the evolving landscape of spam detection. Emphasizing the pivotal role of machine learning in addressing the dynamic nature of spam, the review explores the strengths and limitations of popular algorithms such as Naive Bayes, Support Vector Machines, and neural networks. Additionally, it examines feature engineering, dataset characteristics, and evolving threats, offering insights into the challenges and opportunities within the field. With a focus on recent advancements and emerging trends, this review aims to guide researchers, practitioners, and developers in the ongoing pursuit of robust and adaptive email spam classification systems.
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