A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers
Three frequent factors such as low classification accuracy, computational complexity, and resource consumption have an impact on malware evaluation methods. These challenges are exacerbated by elements such as unbalanced data environments and specific feature generation. To address these challenges,...
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my.uniten.dspace-371042025-03-03T15:47:32Z A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers Ahmed I.T. Hammad B.T. Jamil N. 57193324906 57193327622 36682671900 Discriminant analysis Extraction Image retrieval Local binary pattern Malware Nearest neighbor search Statistical tests Support vector machines Classification-tree analysis Features extraction Gabor Gabor-k-near neighbor Gaussian discriminant analyse Gaussians Local binary patterns Malevi dataset Malimg Malware detection Malwares Segmentation-based fractal texture analyse Segmentation-based fractal texture analyse-k-near neighbor Support vectors machine Tamura Texture analysis Feature extraction Three frequent factors such as low classification accuracy, computational complexity, and resource consumption have an impact on malware evaluation methods. These challenges are exacerbated by elements such as unbalanced data environments and specific feature generation. To address these challenges, we aim to identify optimal texture features and classifiers for effective malware detection. The article outlines a method that consists of four stages: malware conversion to grayscale, feature extraction using (segmentation-based fractal texture analysis (SFTA), Local Binary Pattern (LBP), Haralick, Gabor, and Tamura), classification using (Gaussian Discriminant Analysis (GDA), k-Nearest Neighbor (KNN), Logistic, Support Vector Machines (SVM), Random Forest (RF), Extreme Learning Machine (Ensemble)), and finally the evaluation. Using the Malimg imbalanced and MaleVis balanced datasets, we assess classifier performance and feature effectiveness. Comparative analysis indicates that KNN outperforms other classifiers in terms of Accuracy, Error, F1, and Precision, while SVM and RF as runners-up. Gabor performs better in MaleVis, whereas the SFTA feature performs better under the Malimg dataset. The proposed SFTA-KNN and Gabor-KNN methods achieve 96.29% and 98.02% accuracy, respectively, surpassing current state-of-the-art approaches. Additionally, higher computing performance is achieved by using fewer dimensions when employing our feature extraction method. ? 2013 IEEE. Final 2025-03-03T07:47:31Z 2025-03-03T07:47:31Z 2024 Article 10.1109/ACCESS.2024.3354959 2-s2.0-85182920061 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85182920061&doi=10.1109%2fACCESS.2024.3354959&partnerID=40&md5=8b3cad6dccf703286e6ebddfcf58c8d1 https://irepository.uniten.edu.my/handle/123456789/37104 12 11500 11519 All Open Access; Gold Open Access Institute of Electrical and Electronics Engineers Inc. Scopus |
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Discriminant analysis Extraction Image retrieval Local binary pattern Malware Nearest neighbor search Statistical tests Support vector machines Classification-tree analysis Features extraction Gabor Gabor-k-near neighbor Gaussian discriminant analyse Gaussians Local binary patterns Malevi dataset Malimg Malware detection Malwares Segmentation-based fractal texture analyse Segmentation-based fractal texture analyse-k-near neighbor Support vectors machine Tamura Texture analysis Feature extraction |
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Discriminant analysis Extraction Image retrieval Local binary pattern Malware Nearest neighbor search Statistical tests Support vector machines Classification-tree analysis Features extraction Gabor Gabor-k-near neighbor Gaussian discriminant analyse Gaussians Local binary patterns Malevi dataset Malimg Malware detection Malwares Segmentation-based fractal texture analyse Segmentation-based fractal texture analyse-k-near neighbor Support vectors machine Tamura Texture analysis Feature extraction Ahmed I.T. Hammad B.T. Jamil N. A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers |
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Three frequent factors such as low classification accuracy, computational complexity, and resource consumption have an impact on malware evaluation methods. These challenges are exacerbated by elements such as unbalanced data environments and specific feature generation. To address these challenges, we aim to identify optimal texture features and classifiers for effective malware detection. The article outlines a method that consists of four stages: malware conversion to grayscale, feature extraction using (segmentation-based fractal texture analysis (SFTA), Local Binary Pattern (LBP), Haralick, Gabor, and Tamura), classification using (Gaussian Discriminant Analysis (GDA), k-Nearest Neighbor (KNN), Logistic, Support Vector Machines (SVM), Random Forest (RF), Extreme Learning Machine (Ensemble)), and finally the evaluation. Using the Malimg imbalanced and MaleVis balanced datasets, we assess classifier performance and feature effectiveness. Comparative analysis indicates that KNN outperforms other classifiers in terms of Accuracy, Error, F1, and Precision, while SVM and RF as runners-up. Gabor performs better in MaleVis, whereas the SFTA feature performs better under the Malimg dataset. The proposed SFTA-KNN and Gabor-KNN methods achieve 96.29% and 98.02% accuracy, respectively, surpassing current state-of-the-art approaches. Additionally, higher computing performance is achieved by using fewer dimensions when employing our feature extraction method. ? 2013 IEEE. |
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57193324906 |
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57193324906 Ahmed I.T. Hammad B.T. Jamil N. |
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Article |
author |
Ahmed I.T. Hammad B.T. Jamil N. |
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Ahmed I.T. |
title |
A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers |
title_short |
A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers |
title_full |
A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers |
title_fullStr |
A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers |
title_full_unstemmed |
A Comparative Performance Analysis of Malware Detection Algorithms Based on Various Texture Features and Classifiers |
title_sort |
comparative performance analysis of malware detection algorithms based on various texture features and classifiers |
publisher |
Institute of Electrical and Electronics Engineers Inc. |
publishDate |
2025 |
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1826077563710078976 |
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13.244413 |