MeLeMaD: Adaptive Malware Detection with Meta-Learning
Analysis
Key Takeaways
- •MeLeMaD is a novel framework for malware detection using meta-learning.
- •It incorporates Chunk-wise Feature Selection based on Gradient Boosting (CFSGB) for efficient handling of large datasets.
- •MeLeMaD outperforms state-of-the-art methods on multiple benchmark datasets.
- •The approach addresses the challenges of robustness, adaptability, and large-scale datasets in malware detection.
“MeLeMaD outperforms state-of-the-art approaches, achieving accuracies of 98.04% on CIC-AndMal2020 and 99.97% on BODMAS.”