Static Malware Analysis Using Low-Parameter Machine Learning Models

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Abstract

Recent advancements in cybersecurity threats and malware have brought into question the safety of modern software and computer systems. As a direct result of this, artificial intelligence-based solutions have been on the rise. The goal of this paper is to demonstrate the efficacy of memory-optimized machine learning solutions for the task of static analysis of software metadata. The study comprises an evaluation and comparison of the performance metrics of three popular machine learning solutions: artificial neural networks (ANN), support vector machines (SVMs), and gradient boosting machines (GBMs). The study provides insights into the effectiveness of memory-optimized machine learning solutions when detecting previously unseen malware. We found that ANNs shows the best performance with 93.44% accuracy classifying programs as either malware or legitimate even with extreme memory constraints.

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Baker del Aguila, R., Contreras Pérez, C. D., Silva-Trujillo, A. G., Cuevas-Tello, J. C., & Nunez-Varela, J. (2024). Static Malware Analysis Using Low-Parameter Machine Learning Models. Computers, 13(3). https://doi.org/10.3390/computers13030059

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