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Main Authors: M, Jayasudha, Shaik, Ayesha, Pendharkar, Gaurav, Kumar, Soham, B, Muhesh Kumar, Balaji, Sudharshanan
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.02742
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author M, Jayasudha
Shaik, Ayesha
Pendharkar, Gaurav
Kumar, Soham
B, Muhesh Kumar
Balaji, Sudharshanan
author_facet M, Jayasudha
Shaik, Ayesha
Pendharkar, Gaurav
Kumar, Soham
B, Muhesh Kumar
Balaji, Sudharshanan
contents Cybersecurity is a major concern due to the increasing reliance on technology and interconnected systems. Malware detectors help mitigate cyber-attacks by comparing malware signatures. Machine learning can improve these detectors by automating feature extraction, identifying patterns, and enhancing dynamic analysis. In this paper, the performance of six multiclass classification models is compared on the Malimg dataset, Blended dataset, and Malevis dataset to gain insights into the effect of class imbalance on model performance and convergence. It is observed that the more the class imbalance less the number of epochs required for convergence and a high variance across the performance of different models. Moreover, it is also observed that for malware detectors ResNet50, EfficientNetB0, and DenseNet169 can handle imbalanced and balanced data well. A maximum precision of 97% is obtained for the imbalanced dataset, a maximum precision of 95% is obtained on the intermediate imbalance dataset, and a maximum precision of 95% is obtained for the perfectly balanced dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2310_02742
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Comparative Analysis of Imbalanced Malware Byteplot Image Classification using Transfer Learning
M, Jayasudha
Shaik, Ayesha
Pendharkar, Gaurav
Kumar, Soham
B, Muhesh Kumar
Balaji, Sudharshanan
Machine Learning
Cybersecurity is a major concern due to the increasing reliance on technology and interconnected systems. Malware detectors help mitigate cyber-attacks by comparing malware signatures. Machine learning can improve these detectors by automating feature extraction, identifying patterns, and enhancing dynamic analysis. In this paper, the performance of six multiclass classification models is compared on the Malimg dataset, Blended dataset, and Malevis dataset to gain insights into the effect of class imbalance on model performance and convergence. It is observed that the more the class imbalance less the number of epochs required for convergence and a high variance across the performance of different models. Moreover, it is also observed that for malware detectors ResNet50, EfficientNetB0, and DenseNet169 can handle imbalanced and balanced data well. A maximum precision of 97% is obtained for the imbalanced dataset, a maximum precision of 95% is obtained on the intermediate imbalance dataset, and a maximum precision of 95% is obtained for the perfectly balanced dataset.
title Comparative Analysis of Imbalanced Malware Byteplot Image Classification using Transfer Learning
topic Machine Learning
url https://arxiv.org/abs/2310.02742