Modern commercial antivirus systems increasingly rely on machine learning to keep up with the rampant inflation of new malware. However, it is well-known that machine learning models are vulnerable to adversarial examples (AEs). Previous works have shown that ML malware classifiers are fragile to the white-box adversarial attacks. However, ML models used in commercial antivirus products are usually not available to attackers and only return hard classification labels. Therefore, it is more practical to evaluate the robustness of ML models and real-world AVs in a pure black-box manner. We propose a black-box Reinforcement Learning (RL) based framework to generate AEs for PE malware classifiers and AV engines. It regards the adversarial attac...
Over the last decade, machine learning systems have achieved state-of-the-art performance in many fi...
Machine learning classification models are vulnerable to adversarial examples -- effective input-spe...
The security of machine learning systems has become a great concern in many real-world applications ...
Modern commercial antivirus systems increasingly rely on machine learning to keep up with the rampan...
The use of machine learning (ML) has become an established practice in the realm of malware classific...
Cyber security is used to protect and safeguard computers and various networks from ill-intended dig...
In the realm of modern technology, malware has become a paramount concern. Defined as any software d...
With the rise of the popularity of machine learning (ML), it has been shown that ML-based classifier...
Machine learning is a subset of Artificial Intelligence which is utilised in a variety of different ...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
We present a new algorithm to train a robust malware detector. Malware is a prolific problem and mal...
While machine learning is vulnerable to adversarial examples, it still lacks systematic procedures a...
Nowadays, Machine Learning (ML) solutions are widely adopted in modern malware and network intrusion...
A deployed machine learning-based malware detection model is effectively a black-box for an adversar...
While machine learning is vulnerable to adversarial examples, it still lacks systematic procedures a...
Over the last decade, machine learning systems have achieved state-of-the-art performance in many fi...
Machine learning classification models are vulnerable to adversarial examples -- effective input-spe...
The security of machine learning systems has become a great concern in many real-world applications ...
Modern commercial antivirus systems increasingly rely on machine learning to keep up with the rampan...
The use of machine learning (ML) has become an established practice in the realm of malware classific...
Cyber security is used to protect and safeguard computers and various networks from ill-intended dig...
In the realm of modern technology, malware has become a paramount concern. Defined as any software d...
With the rise of the popularity of machine learning (ML), it has been shown that ML-based classifier...
Machine learning is a subset of Artificial Intelligence which is utilised in a variety of different ...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
We present a new algorithm to train a robust malware detector. Malware is a prolific problem and mal...
While machine learning is vulnerable to adversarial examples, it still lacks systematic procedures a...
Nowadays, Machine Learning (ML) solutions are widely adopted in modern malware and network intrusion...
A deployed machine learning-based malware detection model is effectively a black-box for an adversar...
While machine learning is vulnerable to adversarial examples, it still lacks systematic procedures a...
Over the last decade, machine learning systems have achieved state-of-the-art performance in many fi...
Machine learning classification models are vulnerable to adversarial examples -- effective input-spe...
The security of machine learning systems has become a great concern in many real-world applications ...