Enhanced Decision Tree-J48 With SMOTE Machine Learning Algorithm for Effective Botnet Detection in Imbalance Dataset

Ilyas Adeleke Jimoh, I. Ismaila, M. Olalere
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引用次数: 8

Abstract

Botnet is one of the major security threats in the field of information technology today (IT). The increase in the rate of attack on industrial IT infrastructures, theft of personal data and attacks on financial information is becoming critical. Majority of available dataset for botnet detection are very old and may not be able to stand the present reality in this research area. One of the latest dataset from Canadian Institute of Cyber Security labeled “CICIDS2017” was noted as an imbalance data distribution ratio of 99% to 1%. This distribution represents majority to minority class ratio. This may pose a challenge of over-fitting in majority class to the research and create a bias in the analysis of results. This research work has adopted J48 decision tree machine learning algorithm with application of SMOTE technique in solving the problem of imbalance dataset, thereby leading to an improved detection of botnets. The accuracy of the highest scenario was 99.95%. This is a significant improvement in detection rate compare to the previous research work.
基于SMOTE机器学习算法的增强决策树- j48在不平衡数据集中的有效僵尸网络检测
僵尸网络是当今信息技术领域的主要安全威胁之一。针对工业IT基础设施的攻击、个人数据盗窃和金融信息攻击的增加正变得越来越重要。大多数可用的僵尸网络检测数据都非常陈旧,可能无法满足当前研究领域的实际情况。加拿大网络安全研究所的最新数据集“CICIDS2017”指出,数据分布比例不平衡,为99%:1%。这个分布代表了多数班级与少数班级的比例。这可能会对大多数班级的研究提出过度拟合的挑战,并在结果分析中产生偏差。本研究采用J48决策树机器学习算法,应用SMOTE技术解决数据集不平衡问题,从而提高了对僵尸网络的检测。最高情景的准确率为99.95%。这与以往的研究工作相比,在检出率上有了显著的提高。
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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