Evaluation Method of the Attack Effect of Network Based on Rough Set and KNN

C. Song, Bin Wu
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Abstract

Rough set theory, based on its advantages of calculating index weights without relying on prior knowledge, is introduced into the methods of the attack effect of network. However, classical rough set theory has some shortcomings that can't handle incomplete datasets, and the lack of data will affect the accuracy of evaluation. Usually, the method of deleting the missing parts is adopted in the relevant assessment process, which is easy to cause data waste. This paper presents a method of the attack effect of network based on the combination of rough set theory and KNN interpolation algorithm. Through the KNN interpolation algorithm, the incomplete dataset is complemented, so that the processing error of the rough set can be reduced as much as possible. The experimental results show that the proposed evaluation method has better accuracy and objectivity.
基于粗糙集和KNN的网络攻击效果评估方法
基于粗糙集理论在计算指标权重时不依赖于先验知识的优点,将其引入到网络攻击效果的方法中。但是经典粗糙集理论存在不能处理不完整数据集的缺点,数据的缺乏会影响评价的准确性。在相关评估过程中,通常采用删除缺失部分的方法,容易造成数据浪费。本文提出了一种基于粗糙集理论和KNN插值算法相结合的网络攻击效果分析方法。通过KNN插值算法,对不完整的数据集进行补充,使粗糙集的处理误差尽可能的减小。实验结果表明,该评价方法具有较好的准确性和客观性。
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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