Enhancing malware detection through self-union feature selection using gray wolf optimizer
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Abstract
This research explores the impact of malware on the digital world and presents an innovative system to detect and classify malware instances. The suggested system combines a random forest (RF) classifier and gray wolf optimizer (GWO) to identify and detect malware effectively. Therefore, the suggested system is called RFGWO-Mal. The RFGWO-Mal system employs the GWO for feature selection in binary and multiclass classification scenarios. Then, the RFGWO-Mal system uses a novel self-union feature selection approach, combining features from different subsets of binary and multiclass classification extracted using the GWO optimizer. The RF classifier is then applied for classifying malware and benign data. The…
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5Topics & keywords
Topics
Keywords
- Gray (unit)
- Feature selection
- Gray wolf
- Malware
- Computer science
- Artificial intelligence
- Selection (genetic algorithm)
- Pattern recognition (psychology)
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