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A Malware Detection Approach Using Malware Images and Autoencoders

机译:使用恶意软件图像和AutoEncoders的恶意软件检测方法

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Most machine learning-based malware detection systems use various supervised learning methods to classify different instances of software as benign or malicious. This approach provides no information regarding the behavioral characteristics of malware. It also requires a large amount of training data and is prone to labeling difficulties and can reduce accuracy due to redundant training data. Therefore, we propose a malware detection method based on deep learning, which uses malware images and a set of autoencoders to detect malware. The method is to design an autoencoder to learn the functional characteristics of malware, and then to observe the reconstruction error of autoencoder to realize the classification and detection of malware and benign software. The proposed approach achieves 93% accuracy and comparatively better F1-score values while detecting malware and needs little training data when compared with traditional malware detection systems.
机译:大多数基于机器学习的恶意软件检测系统使用各种监督的学习方法将不同的软件实例分类为良性或恶意。此方法不提供关于恶意软件的行为特征的信息。它还需要大量的训练数据,并且容易标记困难,并且可以降低由于冗余训练数据而降低准确性。因此,我们提出了一种基于深度学习的恶意软件检测方法,它使用恶意软件图像和一组AutoEncoder来检测恶意软件。该方法是设计AutoEncoder以了解恶意软件的功能特征,然后观察AutoEncoder的重建错误,实现恶意软件和良性软件的分类和检测。该方法的准确性和比较更好的F1分数值在检测到恶意软件时达到93%,并且与传统恶意软件检测系统相比,检测恶意软件并需要很少的培训数据。

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