基于weka工具的锁定勒索软件分类算法评价

F. Peter, G. George, K. Mohammed, U. B. Abubakar
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引用次数: 0

摘要

勒索软件的持续危险导致了在创造和识别新方法之间的斗争。虽然检测和缓解系统已经创建并被广泛使用,但由于其反应性,它们总是在不断发展和更新。这是因为有害代码及其行为可以经常被改变以逃避检测方法。在本研究中,我们提出了一种结合静态和动态数据的分类方法,以提高锁定勒索软件检测和分类的精度。我们使用交叉验证训练监督机器学习算法,并使用混淆矩阵来观察准确性,从而对每种算法进行系统比较。在这项工作中,决策树算法等监督算法的准确率为97%,naïve baiyes为95%,随机树为63%,ZeorR为50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVALUATION OF CLASSIFICATION ALGORITHMS ON LOCKY RANSOMWARE USING WEKA TOOL
The ongoing danger of ransomware has led to a struggle between creating and identifying novel approaches. Although detection and mitigation systems have been created and are used widely, they are always evolving and being updated due to their reactive nature. This is because harmful code and its behavior can frequently be altered to evade detection methods. In this study, we present a classification method that combines static and dynamic data to improve the precision of locky ransomware detection and classification. We trained supervised machine learning algorithms using cross-validation and used a confusion matrix to observe accuracy, enabling a systematic comparison of each algorithm. In this work, supervised algorithms such as the decision tree algorithm resulted in an accuracy of 97%, naïve baiyes  95%, random tree 63%, and ZeorR 50%.
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