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Malware algorithm classification method based on big data analysis

机译:基于大数据分析的恶意软件算法分类方法

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摘要

Internet technology has greatly increased the number of malware attacks on networks. Consequently, it has also elevated the importance of automatic malware detection and classification technology based on big data analysis in the field of information security. This paper presents a new method for classifying malware algorithms that exhibits both high accuracy and high coverage. The method combines big data analysis with software security technologies such as feature extraction, machine learning, binary instrumentation and dynamic instruction flow analysis to achieve automated classification of malware algorithms. 20 classification experiments prove the correctness of the method. We also discuss future directions for improving the method.
机译:互联网技术极大地增加了网络上恶意软件攻击的数量。因此,在信息安全领域,它也提高了基于大数据分析的自动恶意软件检测和分类技术的重要性。本文提出了一种新的分类恶意软件算法的方法,该方法具有很高的准确性和覆盖率。该方法将大数据分析与软件安全技术相结合,例如特征提取,机器学习,二进制检测和动态指令流分析,以实现恶意软件算法的自动分类。 20次分类实验证明了该方法的正确性。我们还将讨论改进该方法的未来方向。

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