基于逻辑回归和粒子群算法的垃圾邮件检测分析

A. Ponmalar, K. Rajkumar, Hariharan U, V. Kalaiselvi, S. Deeba
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引用次数: 2

摘要

基于内容的文本分类系统可以自动将文本文档分类为预定义的有限类。但在现代网络环境下,电子邮件文档的分类是一个具有挑战性的过程。电子邮件文档在一个大维度的特征空间中被轻微地表示,创建了一个学习过程,并且泛化(抽象)过程是有问题的。垃圾邮件是未经请求的邮件,大部分垃圾邮件是由垃圾邮件发送者发送的,他们使用大量的电子邮件程序来掩盖他们的特征,每天发送垃圾邮件,没有钱。垃圾邮件会产生各种影响,包括暴露不需要的图像、降低公司生产力、阻塞互联网服务提供商(ISP)网络等。此外,垃圾邮件中还含有感染病毒,这是为一些虚假活动做好准备的。换行PSO在处理多变量问题方面是强大的,其中因素具有真正的品质,这些品质被视为新行,一种独立的方法来排列数据集,并考虑基于PSO的多类数据集分类器。垃圾邮件已经成为数字骗子传播报复性有效载荷的基础,例如感染和木马。面向社区的垃圾邮件识别方法可以管理由众多原因资助的巨大范围的电子通信信息,以及需要暴露电子通信信息的特殊问题。距离保护散列标准安排,用于保护电子通信信息的安全性,同时授权邮件命令检测垃圾邮件识别。PSO,基于标准Map Reduce办公室之上的大数据安全保障协同垃圾邮件识别阶段。如果没有粒子群特征选择,训练精度会降低。在最佳数据集拟合的帮助下,分类结果将是高的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Spam Detection Using Integration of Logistic Regression and PSO Algorithm
Content-based text classification system can automatically categories the text document into predefined limited classes. But the e-mail document classification is a challenging process in the modern internet environment. The e-mail documents are lightly signified in a great dimensional features space, creating a learning process, and the generalization (abstraction) process is problematic. Spam is unsolicited mail, the bulk of spam mails sent by the spammers who use vast e-mail programs to cover their characteristics and send the spam mails every day with no money. The spam mail directs various effects, including exposing unwanted images, decreasing company productivity, blocking Internet Service Providers' (ISP) networks, etc. Additionally, the spam mail contains an infection, which is gotten ready for some fake movement. Newline PSO is mighty in taking care of multivariable issues, where factors take on genuine qualities that are taken as new lines an independent method to arrange the datasets and contemplate the PSO-based Classifier for Multiclass Data Sets. Spam has become the foundation of decisions utilized by digital crooks to spread vindictive payloads, for example, infections and Trojans. Community-oriented spam recognition methods can manage the enormous scope of electronic communication information subsidized through numerous causes, and special issues needing exposure to electronic communication information. Distance-protecting hash standard arrangements utilized to save the security of electronic communication information while empowering mails orders to detect spam recognition. PSO, a Big Data security safeguarding synergistic spam identification stage based on top of a standard Map Reduce office. Without PSO feature selection, the training accuracy would be less. With the help of the best dataset fit, the classification result will be high.
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