AbstractIn the past few years, malware classification techniques have shifted from shallow traditional machine learning models to deeper neural network architectures. The main benefit of some of these is the ability to work with raw data, guaranteed by their automatic feature extraction capabilities. This results in less technical expertise needed while building the models, thus less initial pre-processing resources. Nevertheless, such advantage comes with its drawbacks, since deep learning models require huge quantities of data in order to generate a model that generalizes well. The amount of data required to train a deep network without overfitting is often unobtainable for malware analysts. We take inspiration from image-based data augme...
The traditional malware detection approaches rely heavily on feature extraction procedure, in this p...
Research in the field of malware classification often relies on machine learning models that are tra...
Recent technological developments in computer systems transfer human life from real to virtual envir...
In the past few years, malware classification techniques have shifted from shallow traditional machi...
Current malware detection and classification approaches generally rely on time consuming and knowled...
As malware continues to evolve, deep learning models are increasingly used for malware detection and...
Machine learning and deep learning techniques for malware detection and classifi- cation play an imp...
Current state-of-the-art research for tackling the problem of malware detection and classification i...
Current state-of-the-art research for tackling the problem of malware detection and classification i...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Majority of the advancement in Deep learning (DL) has occurred in domains such as computer vision, a...
Malware is a serious threat in a world where IoT devices are becoming more and more pervasive; indee...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to ad...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to a...
The traditional malware detection approaches rely heavily on feature extraction procedure, in this p...
Research in the field of malware classification often relies on machine learning models that are tra...
Recent technological developments in computer systems transfer human life from real to virtual envir...
In the past few years, malware classification techniques have shifted from shallow traditional machi...
Current malware detection and classification approaches generally rely on time consuming and knowled...
As malware continues to evolve, deep learning models are increasingly used for malware detection and...
Machine learning and deep learning techniques for malware detection and classifi- cation play an imp...
Current state-of-the-art research for tackling the problem of malware detection and classification i...
Current state-of-the-art research for tackling the problem of malware detection and classification i...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Majority of the advancement in Deep learning (DL) has occurred in domains such as computer vision, a...
Malware is a serious threat in a world where IoT devices are becoming more and more pervasive; indee...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to ad...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
Recent work has shown that deep-learning algorithms for malware detection are also susceptible to a...
The traditional malware detection approaches rely heavily on feature extraction procedure, in this p...
Research in the field of malware classification often relies on machine learning models that are tra...
Recent technological developments in computer systems transfer human life from real to virtual envir...