Malware classification using deep learning methods

B. Cakir, Erdogan Dogdu
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引用次数: 64

Abstract

Malware, short for Malicious Software, is growing continuously in numbers and sophistication as our digital world continuous to grow. It is a very serious problem and many efforts are devoted to malware detection in today's cybersecurity world. Many machine learning algorithms are used for the automatic detection of malware in recent years. Most recently, deep learning is being used with better performance. Deep learning models are shown to work much better in the analysis of long sequences of system calls. In this paper a shallow deep learning-based feature extraction method (word2vec) is used for representing any given malware based on its opcodes. Gradient Boosting algorithm is used for the classification task. Then, k-fold cross-validation is used to validate the model performance without sacrificing a validation split. Evaluation results show up to 96% accuracy with limited sample data.
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使用深度学习方法的恶意软件分类
恶意软件,简称恶意软件,随着我们的数字世界不断发展,其数量和复杂性也在不断增长。这是一个非常严重的问题,在当今的网络安全世界中,许多人致力于恶意软件检测。近年来,许多机器学习算法被用于恶意软件的自动检测。最近,深度学习被用于更好的性能。深度学习模型在分析长序列的系统调用时表现得更好。本文采用一种基于浅层深度学习的特征提取方法(word2vec)来表示任意给定的恶意软件的操作码。分类任务采用梯度增强算法。然后,在不牺牲验证分割的情况下,使用k-fold交叉验证来验证模型性能。评估结果表明,在有限的样本数据下,准确率高达96%。
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