Malware detection based on machine learning typically involves training and testing models for each malware family under consideration. While such an approach can generally achieve good accuracy, it requires many classification steps, resulting in a slow, inefficient, and potentially impractical process. In contrast, classifying samples as malware or benign based on more generic “families” would be far more efficient. However, extracting common features from extremely general malware families will likely result in a model that is too generic to be useful. In this research, we perform controlled experiments to determine the tradeoff between generality and accuracy—over a variety of machine learning techniques—based on n-gram features
Malware has been one of the key concerns for Information Technology security researchers for decades...
Current malware detection software often relies on machine learning, which is seen as an improvement...
The occurrence of previously unseen malicious code or malware is an implicit and ongoing issue for a...
Malware detection based on machine learning typically involves training and testing models for each ...
Malware detection based on machine learning techniques is often treated as a problem specific to a p...
When training a machine learning model, there is likely to be a tradeoff between the accuracy of the...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
In the Internet age, malware poses a serious threat to information security. Many studies have been ...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Detection and mitigation of modern malware are critical for the normal operation of an organisation....
Malware is a serious threat in a world where IoT devices are becoming more and more pervasive; indee...
Malware is a computer security problem that can morph to evade traditional detection methods based o...
The ubiquitous advance of technology has been conducive to the proliferation of cyber threats, resul...
This research study mainly focused on the dynamic malware detection. Malware progressively changes, ...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Malware has been one of the key concerns for Information Technology security researchers for decades...
Current malware detection software often relies on machine learning, which is seen as an improvement...
The occurrence of previously unseen malicious code or malware is an implicit and ongoing issue for a...
Malware detection based on machine learning typically involves training and testing models for each ...
Malware detection based on machine learning techniques is often treated as a problem specific to a p...
When training a machine learning model, there is likely to be a tradeoff between the accuracy of the...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
In the Internet age, malware poses a serious threat to information security. Many studies have been ...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Detection and mitigation of modern malware are critical for the normal operation of an organisation....
Malware is a serious threat in a world where IoT devices are becoming more and more pervasive; indee...
Malware is a computer security problem that can morph to evade traditional detection methods based o...
The ubiquitous advance of technology has been conducive to the proliferation of cyber threats, resul...
This research study mainly focused on the dynamic malware detection. Malware progressively changes, ...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Malware has been one of the key concerns for Information Technology security researchers for decades...
Current malware detection software often relies on machine learning, which is seen as an improvement...
The occurrence of previously unseen malicious code or malware is an implicit and ongoing issue for a...