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A hybrid deep learning image-based analysis for effective malware detection

机译:基于混合深度学习图像的分析可有效检测恶意软件

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The explosive growth of Internet and the recent increasing trends in automation using intelligent applications have provided a veritable playground for malicious software (malware) attackers. With a variety of devices connected seamlessly via the Internet and large amounts of data collected, the escalating malware attacks and security risks are a big concern. While a number of malware detection methods are available, new methods are required to match with the scale and complexity of such a data-intensive environment. We propose a novel and unified hybrid deep learning and visualization approach for an effective detection of malware. The aim of the paper is two-fold: 1. to present the use of image-based techniques for detecting suspicious behavior of systems, and 2. to propose and investigate the application of hybrid image-based approaches with deep learning architectures for an effective malware classification. The performance is measured by employing various similarity measures of malware behavior patterns as well as cost-sensitive deep learning architectures. The scalability is benchmarked by testing our proposed hybrid approach with both public and privately collected large malware datasets that show high accuracy of our malware classifiers. (C) 2019 Published by Elsevier Ltd.
机译:Internet的爆炸性增长以及使用智能应用程序实现自动化的最新趋势已为恶意软件(malware)攻击者提供了名副其实的游乐场。随着各种各样的设备通过Internet无缝连接并收集了大量数据,不断升级的恶意软件攻击和安全风险成为一个大问题。尽管有许多恶意软件检测方法可用,但需要新的方法来与这种数据密集型环境的规模和复杂性相匹配。我们提出了一种新颖且统一的混合深度学习和可视化方法,用于有效检测恶意软件。本文的目的有两个:1.介绍基于图像的技术来检测系统的可疑行为,以及2.提出并研究基于混合图像的方法与深度学习架构的应用,以实现有效的恶意软件分类。通过采用恶意软件行为模式的各种相似性度量以及对成本敏感的深度学习架构来衡量性能。可扩展性通过测试我们建议的混合方法进行基准测试,该方法使用公开和私有收集的大型恶意软件数据集进行测试,这些数据集显示了我们恶意软件分类器的高精度。 (C)2019由Elsevier Ltd.发布

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