A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs

This study proposes an innovative intrusion detection system for Android malware based on a zero-shot learning GAN approach. Our system achieved an accuracy of 99.99%, indicating that this approach can be highly effective for identifying intrusion events. The proposed approach is particularly valua...

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Main Authors: Syed Atir Raza Shirazi, Mehwish Shaikh
Format: Article
Language:English
Published: Sir Syed University of Engineering and Technology, Karachi. 2023-12-01
Series:Sir Syed University Research Journal of Engineering and Technology
Subjects:
Online Access:http://www.sirsyeduniversity.edu.pk/ssurj/rj/index.php/ssurj/article/view/584
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author Syed Atir Raza Shirazi
Mehwish Shaikh
author_facet Syed Atir Raza Shirazi
Mehwish Shaikh
author_sort Syed Atir Raza Shirazi
collection DOAJ
description This study proposes an innovative intrusion detection system for Android malware based on a zero-shot learning GAN approach. Our system achieved an accuracy of 99.99%, indicating that this approach can be highly effective for identifying intrusion events. The proposed approach is particularly valuable for analyzing complex datasets such as those involving Android malware. The results of this study demonstrate the potential of this method for improving the accuracy and efficiency of intrusion detection systems in real-world scenarios. Future work could involve exploring alternative feature selection techniques and evaluating the performance of other machine learning classifiers on larger datasets to further enhance the accuracy of intrusion detection systems. The study highlights the importance of adopting advanced machine learning techniques such as zero-shot learning GANs to enhance the effectiveness of intrusion detection systems in cybersecurity. The proposed system presents a significant contribution to the field of intrusion detection, providing an effective solution for detecting malicious activities in Android malware, which can improve the security of mobile devices.
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spelling doaj-art-8e855133a4e04e0bb6373ded7cfe95752025-08-20T02:35:30ZengSir Syed University of Engineering and Technology, Karachi.Sir Syed University Research Journal of Engineering and Technology1997-06412415-20482023-12-01132A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANsSyed Atir Raza Shirazi0Mehwish ShaikhMinhaj University This study proposes an innovative intrusion detection system for Android malware based on a zero-shot learning GAN approach. Our system achieved an accuracy of 99.99%, indicating that this approach can be highly effective for identifying intrusion events. The proposed approach is particularly valuable for analyzing complex datasets such as those involving Android malware. The results of this study demonstrate the potential of this method for improving the accuracy and efficiency of intrusion detection systems in real-world scenarios. Future work could involve exploring alternative feature selection techniques and evaluating the performance of other machine learning classifiers on larger datasets to further enhance the accuracy of intrusion detection systems. The study highlights the importance of adopting advanced machine learning techniques such as zero-shot learning GANs to enhance the effectiveness of intrusion detection systems in cybersecurity. The proposed system presents a significant contribution to the field of intrusion detection, providing an effective solution for detecting malicious activities in Android malware, which can improve the security of mobile devices. http://www.sirsyeduniversity.edu.pk/ssurj/rj/index.php/ssurj/article/view/584Zero Shot LearningIntrusion DetectionAttacksMalwareGenerative adversarial networks
spellingShingle Syed Atir Raza Shirazi
Mehwish Shaikh
A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs
Sir Syed University Research Journal of Engineering and Technology
Zero Shot Learning
Intrusion Detection
Attacks
Malware
Generative adversarial networks
title A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs
title_full A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs
title_fullStr A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs
title_full_unstemmed A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs
title_short A Novel Approach to Android Malware Intrusion Detection Using Zero-Shot Learning GANs
title_sort novel approach to android malware intrusion detection using zero shot learning gans
topic Zero Shot Learning
Intrusion Detection
Attacks
Malware
Generative adversarial networks
url http://www.sirsyeduniversity.edu.pk/ssurj/rj/index.php/ssurj/article/view/584
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