n-gram Effect in Malware Detection Using Multilayer Perceptron (MLP)

Benni Purnama, D. Stiawan, Darmawijoyo Hanapi, E. Winanto, R. Budiarto, Mohd Yazid Bin Idris
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引用次数: 1

Abstract

Malware is a threat that can compromise cyber security. Currently, the development of malware is becoming increasingly complex and difficult to detect. One way to improve detection accuracy is to implement the n-gram feature extraction. n-gram is one of method to analyze malware, by capturing the frequency of string/opcode which often appear from malware. This work aims to improve the performance of malware detection by evaluating the best number of n-grams to extract the opcode. Selection of n number in n-gram process will be very influencing in malware classification result. This research work investigates the effect the n value of n-gram on the accuracy detection by varying the value n = 1 to n = 5. The best accuracy detection in the experiments using Multilayer Perceptron (MLP) classifier reaches 89 percent.
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基于多层感知器(MLP)的n-gram效应恶意软件检测
恶意软件是一种危害网络安全的威胁。目前,恶意软件的开发正变得越来越复杂和难以检测。提高检测精度的一种方法是实现n-gram特征提取。N-gram是一种分析恶意软件的方法,通过捕获恶意软件中经常出现的字符串/操作码的频率来分析恶意软件。本工作旨在通过评估提取操作码的最佳n-gram数来提高恶意软件检测的性能。n-gram过程中n个数的选择对恶意软件分类结果有很大影响。本研究通过改变n = 1到n = 5的值,探讨n-gram的n值对准确率检测的影响。在实验中,多层感知器(MLP)分类器的检测准确率达到89%。
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