基于图神经网络的可再生能源管理平台恶意软件检测与分类

Hsiao-Chung Lin, Ping Wang, Wen-Hui Lin, Yu-Hsiang Lin, Jia-Hong Chen
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摘要

随着科学技术的飞速发展,信息安全问题越来越受到人们的关注。据统计,全球每年有数千万台计算机被恶意软件(Malware)感染,造成的损失高达数十亿美元。恶意软件通过病毒、蠕虫、特洛伊木马等多种方式入侵计算机系统,利用网络漏洞进行入侵。大多数入侵检测方法采用行为分析技术,通过包收集和过滤、特征工程和属性比较来分析恶意软件威胁。这些方法很难区分恶意流量和合法流量。利用深度学习和图神经网络(gnn)对恶意软件进行检测和分类,学习恶意软件的特征。本文提出了一种基于gnn的可再生能源管理平台恶意软件检测与分类模型。利用GNN对恶意软件进行分析,结合布谷鸟沙盒恶意软件记录进行恶意软件检测和分类。为了评估基于gnn的模型的有效性,使用CIC-AndMal2017数据集来检验其准确性、精密度、召回率和ROC曲线。实验结果表明,基于gnn的模型可以达到较好的效果。
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Graph Neural Network for Malware Detection and Classification on Renewable Energy Management Platform
With the rapid development of science and technology, information security issues have been attracting more attention. According to statistics, tens of millions of computers around the world are infected by malicious software (Malware) every year, causing losses of up to several USD billion. Malware uses various methods to invade computer systems, including viruses, worms, Trojan horses, and others and exploit network vulnerabilities for intrusion. Most intrusion detection approaches employ behavioral analysis techniques to analyze malware threats with packet collection and filtering, feature engineering, and attribute comparison. These approaches are difficult to differentiate malicious traffic from legitimate traffic. Malware detection and classification are conducted with deep learning and graph neural networks (GNNs) to learn the characteristics of malware. In this study, a GNN-based model is proposed for malware detection and classification on a renewable energy management platform. It uses GNN to analyze malware with Cuckoo Sandbox malware records for malware detection and classification. To evaluate the effectiveness of the GNN-based model, the CIC-AndMal2017 dataset is used to examine its accuracy, precision, recall, and ROC curve. Experimental results show that the GNN-based model can reach better results.
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