For efficient malware removal, determination of malware threat levels, and damage estimation, malware family classification plays a critical role. In this paper, we extract features from malware executable files and represent them as images using various approaches. We then focus on Generative Adversarial Networks (GAN) for multiclass classification and compare our GAN results to other popular machine learning techniques, including Support Vector Machine (SVM), XGBoost, and Restricted Boltzmann Machines (RBM). We find that the AC-GAN discriminator is generally competitive with other machine learning techniques. We also evaluate the utility of the GAN generative model for adversarial attacks on image-based malware detection. While AC-GAN gen...
Image classification has undergone a revolution in recent years due to the high performance of new d...
According to AV vendors malicious software has been growing exponentially last years. One of the mai...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
Malware detection and analysis are important topics in cybersecurity. For efficient malware removal,...
As malware continues to evolve, deep learning models are increasingly used for malware detection and...
Machine learning is widely used for detecting and classifying malware. Unfortunately, machine learni...
A generative adversarial network (GAN) is a powerful machine learning concept where both a generativ...
Generative Adversarial Networks (GANs) have seen significant interest since their introduction in 20...
Majority of the advancement in Deep learning (DL) has occurred in domains such as computer vision, a...
Research in the field of malware classification often relies on machine learning models that are tra...
Computer vision is one of the hottest research fields in deep learning. The emergence of generative ...
Malware detection is vital as it ensures that a computer is safe from any kind of malicious software...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
In the field of adversarial attacks, the generative adversarial network (GAN) has shown better perfo...
Cyber security is used to protect and safeguard computers and various networks from ill-intended dig...
Image classification has undergone a revolution in recent years due to the high performance of new d...
According to AV vendors malicious software has been growing exponentially last years. One of the mai...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
Malware detection and analysis are important topics in cybersecurity. For efficient malware removal,...
As malware continues to evolve, deep learning models are increasingly used for malware detection and...
Machine learning is widely used for detecting and classifying malware. Unfortunately, machine learni...
A generative adversarial network (GAN) is a powerful machine learning concept where both a generativ...
Generative Adversarial Networks (GANs) have seen significant interest since their introduction in 20...
Majority of the advancement in Deep learning (DL) has occurred in domains such as computer vision, a...
Research in the field of malware classification often relies on machine learning models that are tra...
Computer vision is one of the hottest research fields in deep learning. The emergence of generative ...
Malware detection is vital as it ensures that a computer is safe from any kind of malicious software...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
In the field of adversarial attacks, the generative adversarial network (GAN) has shown better perfo...
Cyber security is used to protect and safeguard computers and various networks from ill-intended dig...
Image classification has undergone a revolution in recent years due to the high performance of new d...
According to AV vendors malicious software has been growing exponentially last years. One of the mai...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...