Deep learning is a thriving field currently stuffed with many practical applications and active research topics. It allows computers to learn from experience and to understand the world in terms of a hierarchy of concepts, with each being defined through its relations to simpler concepts. Relying on the strong capabilities of deep learning, we propose a convolutional generative adversarial network-based (Conv-GAN) framework titled MalFox, targeting adversarial malware example generation against third-party black-box malware detectors. Motivated by the rival game between malware authors and malware detectors, MalFox adopts a confrontational approach to produce perturbation paths, with each formed by up to three methods (namely Obfusmal, Stea...
We present a new algorithm to train a robust malware detector. Malware is a prolific problem and mal...
Malicious software is one of the most serious cyber threats on the Internet today. Traditional malwa...
Training classifiers that are robust against adversarially modified examples is becoming increasingl...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to a...
Malware detection is vital as it ensures that a computer is safe from any kind of malicious software...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to ad...
Machine learning is widely used for detecting and classifying malware. Unfortunately, machine learni...
As malware continues to evolve, deep learning models are increasingly used for malware detection and...
Deep learning constitutes a pivotal component within the realm of machine learning, offering remarka...
Current state-of-the-art research for tackling the problem of malware detection and classification i...
While machine learning is vulnerable to adversarial examples, it still lacks systematic procedures a...
The use of machine learning (ML) has become an established practice in the realm of malware classific...
Signature-based malware detectors have proven to be insufficient as even a small change in malignant...
Malware detection and analysis are important topics in cybersecurity. For efficient malware removal,...
With the rise of the popularity of machine learning (ML), it has been shown that ML-based classifier...
We present a new algorithm to train a robust malware detector. Malware is a prolific problem and mal...
Malicious software is one of the most serious cyber threats on the Internet today. Traditional malwa...
Training classifiers that are robust against adversarially modified examples is becoming increasingl...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to a...
Malware detection is vital as it ensures that a computer is safe from any kind of malicious software...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to ad...
Machine learning is widely used for detecting and classifying malware. Unfortunately, machine learni...
As malware continues to evolve, deep learning models are increasingly used for malware detection and...
Deep learning constitutes a pivotal component within the realm of machine learning, offering remarka...
Current state-of-the-art research for tackling the problem of malware detection and classification i...
While machine learning is vulnerable to adversarial examples, it still lacks systematic procedures a...
The use of machine learning (ML) has become an established practice in the realm of malware classific...
Signature-based malware detectors have proven to be insufficient as even a small change in malignant...
Malware detection and analysis are important topics in cybersecurity. For efficient malware removal,...
With the rise of the popularity of machine learning (ML), it has been shown that ML-based classifier...
We present a new algorithm to train a robust malware detector. Malware is a prolific problem and mal...
Malicious software is one of the most serious cyber threats on the Internet today. Traditional malwa...
Training classifiers that are robust against adversarially modified examples is becoming increasingl...