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A Deep Learning Approach to Image-Based Malware Analysis

机译:基于图像的恶意软件分析的深度学习方法

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Malicious software also referred to as "Malware" is one of the serious threats on the Internet today since it has been growing exponentially over the last decade according to research, causing substantial financial trouble to various organizations. Different security companies have been proposing different techniques to defend from this threat which is a major challenge on the complexity and growing volumes. Recently, malware communities and researchers have begun to apply machine learning and deep learning model to detect potential threats. We propose a malware classification model that takes advantage of the potential of deep learning (DL) models using the convolutional neural network (CNN) and combination of machine learning classifier with CNN such as support vector machine (SVM) for classifying their families. Detection of newly released malware using such models would be possible through mathematical function. That is, f:n→z, where n is the given malware and z is their corresponding malware family. Malimg dataset is used to perform the experiment which contains malware image of 25 malware families and 9339 malware samples. CNN has outperformed the CNN-S VM with a test accuracy of 97.5%.
机译:恶意软件还称为“恶意软件”是今天互联网上的严重威胁之一,因为它根据研究的最后十年呈指数增长,对各组织造成了大量的财务问题。不同的安全公司一直在提出不同的技术来捍卫这种威胁,这是对复杂性和增长卷的重大挑战。最近,恶意软件社区和研究人员已经开始应用机器学习和深度学习模型来检测潜在的威胁。我们提出了一种恶意软件分类模型,利用了使用卷积神经网络(CNN)的深度学习(DL)模型的潜力,以及使用CNN的机器学习分类器的组合,例如支持向量机(SVM)进行分类。通过数学函数,可以使用这些模型来检测新释放的恶意软件。也就是说,f:n→z,其中n是给定恶意软件,z是它们对应的恶意软件系列。 Malimg DataSet用于执行实验,该实验包含25个恶意软件系列和9339个恶意软件样本的恶意软件图像。 CNN的表现优于CNN-S VM,测试精度为97.5%。

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