Deep Learning Defenders: Harnessing Convolutional Networks for Malware Detection

A. Abdelmonem, Shimaa S. Mohamed
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引用次数: 2

Abstract

Malware attacks continue to pose a significant threat to computer systems and networks worldwide. Traditional signature-based malware detection methods have proven to be insufficient in detecting the increasing number of sophisticated malware variants. This has led to the exploration of new approaches, including machine learning-based techniques. In this paper, we propose a novel approach to malware detection using residually connect convolutional networks. We demonstrate the effectiveness of our approach by training CNN on a large dataset of malware samples and benign files and evaluating its performance on a separate test set. Extensive experiments on a public dataset of malware images demonstrated that our model could achieve high accuracy in detecting both known and unknown malware samples. The findings suggest that our residual convolution has great potential for improving malware detection and enhancing the security of computer systems and networks.
深度学习防御者:利用卷积网络进行恶意软件检测
恶意软件攻击继续对全球计算机系统和网络构成重大威胁。传统的基于签名的恶意软件检测方法已被证明不足以检测越来越多的复杂恶意软件变体。这导致了对新方法的探索,包括基于机器学习的技术。在本文中,我们提出了一种利用残差连接卷积网络检测恶意软件的新方法。我们通过在恶意软件样本和良性文件的大型数据集上训练CNN并在单独的测试集上评估其性能来证明我们方法的有效性。在恶意软件图像的公共数据集上进行的大量实验表明,我们的模型在检测已知和未知恶意软件样本方面都能达到很高的准确性。研究结果表明,残差卷积在改进恶意软件检测和增强计算机系统和网络的安全性方面具有很大的潜力。
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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