A fundamental problem in malware research consists of malware detection, that is, dis- tinguishing malware samples from benign samples. This problem becomes more challeng- ing when we consider multiple malware families. A typical approach to this multi-family detection problem is to train a machine learning model for each malware family and score each sample against all models. The resulting scores are then used for classification. We refer to this approach as “cold fusion,” since we combine previously-trained models—no retraining of these base models is required when additional malware families are considered. An alternative approach is to train a single model on samples from multiple malware families. We refer to this latter approach as “...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Current malware detection software often relies on machine learning, which is seen as an improvement...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
A fundamental problem in malware research consists of malware detection, that is, dis- tinguishing m...
Abstract. In classifying malware, an open research question is how to combine similar extracted data...
When training a machine learning model, there is likely to be a tradeoff between the accuracy of the...
Malware could be developed and transformed into various forms to deceive users and evade antivirus a...
Network attacks remain a constant threat to organizations around the globe. Intrusion detection syst...
Malware is still one of the most prominent vectors through which computer networks and systems are c...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
The detection heuristic in contemporary machine learning Windows malware classifiers is typically ba...
Although malware detection is a very active area of research, few works were focused on using physic...
Deepfake detection is of fundamental importance to preserve the reliability of multimedia communicat...
Malware detection based on machine learning techniques is often treated as a problem specific to a p...
Research in the field of malware classification often relies on machine learning models that are tra...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Current malware detection software often relies on machine learning, which is seen as an improvement...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
A fundamental problem in malware research consists of malware detection, that is, dis- tinguishing m...
Abstract. In classifying malware, an open research question is how to combine similar extracted data...
When training a machine learning model, there is likely to be a tradeoff between the accuracy of the...
Malware could be developed and transformed into various forms to deceive users and evade antivirus a...
Network attacks remain a constant threat to organizations around the globe. Intrusion detection syst...
Malware is still one of the most prominent vectors through which computer networks and systems are c...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
The detection heuristic in contemporary machine learning Windows malware classifiers is typically ba...
Although malware detection is a very active area of research, few works were focused on using physic...
Deepfake detection is of fundamental importance to preserve the reliability of multimedia communicat...
Malware detection based on machine learning techniques is often treated as a problem specific to a p...
Research in the field of malware classification often relies on machine learning models that are tra...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Current malware detection software often relies on machine learning, which is seen as an improvement...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...