Effective One-Class Classifier Model for Memory Dump Malware Detection

Mahmoud Al-Qudah, Zein Ashi, Mohammad M. Alnabhan, Q. Abu Al-haija
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引用次数: 7

Abstract

Malware complexity is rapidly increasing, causing catastrophic impacts on computer systems. Memory dump malware is gaining increased attention due to its ability to expose plaintext passwords or key encryption files. This paper presents an enhanced classification model based on One class SVM (OCSVM) classifier that can identify any deviation from the normal memory dump file patterns and detect it as malware. The proposed model integrates OCSVM and Principal Component Analysis (PCA) for increased model sensitivity and efficiency. An up-to-date dataset known as “MALMEMANALYSIS-2022” was utilized during the evaluation phase of this study. The accuracy achieved by the traditional one-class classification (TOCC) model was 55%, compared to 99.4% in the one-class classification with the PCA (OCC-PCA) model. Such results have confirmed the improved performance achieved by the proposed model.
内存转储恶意软件检测的有效单类分类器模型
恶意软件的复杂性正在迅速增加,对计算机系统造成灾难性的影响。内存转储恶意软件由于其暴露明文密码或密钥加密文件的能力而受到越来越多的关注。本文提出了一种基于单类支持向量机(OCSVM)分类器的增强分类模型,该模型可以识别任何偏离正常内存转储文件模式的文件,并将其检测为恶意软件。该模型将OCSVM与主成分分析(PCA)相结合,提高了模型的灵敏度和效率。在本研究的评估阶段,使用了最新的数据集“MALMEMANALYSIS-2022”。传统的单类分类(TOCC)模型的准确率为55%,而PCA (OCC-PCA)模型的准确率为99.4%。这些结果证实了所提出的模型所取得的改进性能。
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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