Implementasi Metode K-Means, Dbscan, Dan Meanshift Untuk Analisis Jenis Ancaman Jaringan Pada Intrusion Detection System

Toga Aldila Cinderatama, R. Z. Alhamri, Yoppy Yunhasnawa
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引用次数: 2

Abstract

The implementation of network security infrastructure has been carried out, including the Intrusion Detection System (IDS). However, in its implementation there are still many who have not combined with Data Technology (Data Science) to get a more comprehensive analysis. This study aims to analyze the types and characteristics of network threats using data science. As a computational method, the results of 3 algorithms in the unsupervised learning category will be implemented and compared, namely K-Means, Meanshift, and Density-Based Spatial Clustering of Applications with Noise (DBSCAN). From the experimental results as measured by the Silhouette Index (SI ) the best cluster of each implemented algorithm is DBSCAN which has the best SI value of 0.3424 with an Eps value of 0.2 and a MinPts value of 3. Meanwhile, from the results of clustering using K-Means, The best SI value was obtained by experiment k=4 with a value of 0.4531. The results of clustering using MeanShift, the best SI value was obtained by experiment bandwidth = 1 with a value of 0.5305.
实施了网络安全基础设施,包括入侵检测系统(IDS)。然而,在其实施中,仍有许多人没有结合数据技术(Data Science)来进行更全面的分析。本研究旨在利用数据科学分析网络威胁的类型和特征。作为一种计算方法,我们将实现和比较无监督学习类别中3种算法的结果,即K-Means、Meanshift和基于密度的空间聚类(DBSCAN)。从剪影指数(Silhouette Index, SI)测量的实验结果来看,各实现算法的最佳聚类为DBSCAN,其最佳SI值为0.3424,Eps值为0.2,MinPts值为3。同时,从k - means聚类结果来看,实验k=4的SI值为0.4531,为最佳SI值。采用MeanShift聚类的结果表明,实验带宽= 1时SI值最佳,其值为0.5305。
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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