When training a machine learning model, there is likely to be a tradeoff between the accuracy of the model and the generality of the dataset. Previous research has shown that if we train a model to detect one specific malware family, we obtain stronger results as compared to a case where we train a single model on multiple diverse families. During the detection phase, it would be more efficient to have a single model that could detect multiple families, rather than having to score each sample against multiple models. In this research, we conduct experiments to quantify the relationship between the generality of the training dataset and the accuracy of the resulting model within the context of the malware detection problem
Due to the prevalence of security issues and cyberattacks, cybersecurity is crucial in today's envir...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Many commercial anti-virus software already usesome form of machine learning to help wit...
When training a machine learning model, there is likely to be a tradeoff between the accuracy of the...
Malware detection based on machine learning techniques is often treated as a problem specific to a p...
Malware detection based on machine learning typically involves training and testing models for each ...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Automatically classifying similar malware families is a challenging problem. In this research, we at...
Low-resource malware families are highly susceptible to being overlooked when using machine learning...
Current malware detection software often relies on machine learning, which is seen as an improvement...
Malware is software that is designed to do harm to computer systems. Malware often evolves over a pe...
Previous work has shown that we can effectively cluster certain classes of mal- ware into their resp...
The use of machine learning (ML) has become an established practice in the realm of malware classific...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
With the rise of the popularity of machine learning (ML), it has been shown that ML-based classifier...
Due to the prevalence of security issues and cyberattacks, cybersecurity is crucial in today's envir...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Many commercial anti-virus software already usesome form of machine learning to help wit...
When training a machine learning model, there is likely to be a tradeoff between the accuracy of the...
Malware detection based on machine learning techniques is often treated as a problem specific to a p...
Malware detection based on machine learning typically involves training and testing models for each ...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Automatically classifying similar malware families is a challenging problem. In this research, we at...
Low-resource malware families are highly susceptible to being overlooked when using machine learning...
Current malware detection software often relies on machine learning, which is seen as an improvement...
Malware is software that is designed to do harm to computer systems. Malware often evolves over a pe...
Previous work has shown that we can effectively cluster certain classes of mal- ware into their resp...
The use of machine learning (ML) has become an established practice in the realm of malware classific...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
With the rise of the popularity of machine learning (ML), it has been shown that ML-based classifier...
Due to the prevalence of security issues and cyberattacks, cybersecurity is crucial in today's envir...
The spread of ransomware has risen exponentially over the past decade, causing huge financial damage...
Many commercial anti-virus software already usesome form of machine learning to help wit...