Negative selection algorithm in artificial immune system for spam detection

I. Idris, A. Selamat
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引用次数: 3

Abstract

Artificial immune system creates techniques that aim at developing immune based models. This was done by distinguishing self from non-self. Mathematical analysis exposed the computation and experimental description of the method and how it is applied to spam detection. This paper looked at evaluation and accuracy in spam detection within the negative selection algorithm. Preliminary result or classifier of self and non-self was carefully studied against mistake of assumption during email classification whereby an email was recognized as a spam and deleted or non-spam and accepted carelessly. This process is called false positive and false negative. Given a threshold, the accuracy increase with increased threshold to determine best performance of the spam detector. Also an improvement of the false positive rate was determined for better spam detector.
垃圾邮件检测人工免疫系统中的负选择算法
人工免疫系统创造了旨在开发基于免疫模型的技术。这是通过区分自我与非我来实现的。数学分析揭示了该方法的计算和实验描述,以及如何将其应用于垃圾邮件检测。本文研究了负面选择算法中垃圾邮件检测的评估和准确性。仔细研究了自我和非自我分类的初步结果,防止在电子邮件分类过程中出现假设错误,从而将电子邮件识别为垃圾邮件而删除或非垃圾邮件而不小心接受。这个过程被称为假阳性和假阴性。给定一个阈值,准确度随着阈值的增加而增加,以确定垃圾邮件检测器的最佳性能。此外,还确定了更好的垃圾邮件检测器的误报率的改进。
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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