基于机器学习的下一代恶意软件检测新方法

Ikram Ben abdel ouahab, Lotfi Elaachak, Yasser A. Alluhaidan, M. Bouhorma
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引用次数: 0

摘要

如今,恶意软件攻击的目标是不同类型的设备,如物联网、移动设备、服务器甚至云。它会造成硬件损坏和经济损失,尤其是对大公司而言。对于网络安全专家来说,恶意软件攻击是一个严重的问题。本文提出了一种基于机器学习分类和可视化技术的未知恶意软件家族检测新方法。将恶意软件二进制文件转换为灰度图像,然后对每个图像使用GIST描述符作为机器学习模型的输入。对于恶意软件分类部分,我们使用了3种机器学习算法。这些分类器非常高效,最高精度达到98%。一旦我们训练、测试和评估模型,我们就开始模拟两个新的恶意软件家族。我们不期望一个好的预测,因为模型不知道家族;然而,我们的目标是分析分类器在新家族的情况下的行为。最后,我们提出了一种使用过滤器来判断分类是正常的还是零日恶意软件的方法。
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A new approach to detect next generation of malware based on machine learning
In these days, malware attacks target different kinds of devices as IoT, mobiles, servers even the cloud. It causes several hardware damages and financial losses especially for big companies. Malware attacks represent a serious issue to cybersecurity specialists. In this paper, we propose a new approach to detect unknown malware families based on machine learning classification and visualization technique. A malware binary is converted to grayscale image, then for each image a GIST descriptor is used as input to the machine learning model. For the malware classification part we use 3 machine learning algorithms. These classifiers are so efficient where the highest precision reach 98%. Once we train, test and evaluate models we move to simulate 2 new malware families. We do not expect a good prediction since the model did not know the family; however our goal is to analyze the behavior of our classifiers in the case of new family. Finally, we propose an approach using a filter to know either the classification is normal or it's a zero-day malware.
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