Download PDFOpen PDF in browserEnhancing Cybersecurity: Leveraging Ensemble Learning for Effective Malware Detection and ClassificationEasyChair Preprint 1203412 pages•Date: February 12, 2024AbstractIn an era dominated by escalating cyber threats, the need for robust malware detection and classification systems has become imperative. This paper introduces a novel approach to enhance cybersecurity through the integration of ensemble learning techniques for more effective detection and classification of malware. Ensemble learning combines the strengths of multiple machine learning models to improve overall accuracy and reliability. The proposed system leverages this approach to fortify the defenses against constantly evolving and sophisticated malware attacks. Through comprehensive experimentation, the results demonstrate the superior performance of the ensemble learning-based solution in comparison to traditional methods. Keyphrases: Classification, Cybersecurity, Security, Threat Intelligence, deep learning, ensemble learning, feature engineering, hybrid models, machine learning, malware detection
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