2023
DOI: 10.3390/info14030167
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MLP-Mixer-Autoencoder: A Lightweight Ensemble Architecture for Malware Classification

Abstract: Malware is becoming an effective support tool not only for professional hackers but also for amateur ones. Due to the support of free malware generators, anyone can easily create various types of malicious code. The increasing amount of novel malware is a daily global problem. Current machine learning-based methods, especially image-based malware classification approaches, are attracting significant attention because of their accuracy and computational cost. Convolutional Neural Networks are widely applied in … Show more

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