Current malware detection and classification approaches generally rely on time consuming and knowledge intensive processes to extract patterns (signatures) and behaviors from malware, which are then used for identification. Moreover, these signatures are often limited to local, contiguous sequences within the data whilst ignoring their context in relation to each other and throughout the malware file as a whole. We present a Deep Learning based malware classification approach that requires no expert domain knowledge and is based on a purely data driven approach for complex pattern and feature identification
© 2018 IEEE. In this paper, we propose a deep learning framework for malware classification. There h...
Over the years, malware is getting stronger and growing to become a powerful threat in the Informati...
Android and Windows are the predominant operating systems used in mobile environment and personal co...
In the past few years, malware classification techniques have shifted from shallow traditional machi...
Domain generation algorithms (DGAs) have become commonplace in malware that seeks to establish comma...
The struggle between security analysts and malware developers is a never-ending battle with the comp...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Copyright © 2020, IGI Global. In this article, the authors propose a deep learning framework for mal...
Recent technological developments in computer systems transfer human life from real to virtual envir...
The traditional malware detection approaches rely heavily on feature extraction procedure, in this p...
Malicious software (ransom ware) cyber attacks in frequency and severity, posing an increasingly ser...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
Considerable progress has been achieved in the digital domain, particularly in the online realm wher...
Signature and anomaly based techniques are the quintessential approaches to malware detection. Howev...
Machine learning has become an appealing signature-less approach to detect and classify malware beca...
© 2018 IEEE. In this paper, we propose a deep learning framework for malware classification. There h...
Over the years, malware is getting stronger and growing to become a powerful threat in the Informati...
Android and Windows are the predominant operating systems used in mobile environment and personal co...
In the past few years, malware classification techniques have shifted from shallow traditional machi...
Domain generation algorithms (DGAs) have become commonplace in malware that seeks to establish comma...
The struggle between security analysts and malware developers is a never-ending battle with the comp...
It is often claimed that the primary advantage of deep learning is that such models can continue to ...
Copyright © 2020, IGI Global. In this article, the authors propose a deep learning framework for mal...
Recent technological developments in computer systems transfer human life from real to virtual envir...
The traditional malware detection approaches rely heavily on feature extraction procedure, in this p...
Malicious software (ransom ware) cyber attacks in frequency and severity, posing an increasingly ser...
Cavazos, JohnBad actors have embraced automation and current malware analysis systems cannot keep up...
Considerable progress has been achieved in the digital domain, particularly in the online realm wher...
Signature and anomaly based techniques are the quintessential approaches to malware detection. Howev...
Machine learning has become an appealing signature-less approach to detect and classify malware beca...
© 2018 IEEE. In this paper, we propose a deep learning framework for malware classification. There h...
Over the years, malware is getting stronger and growing to become a powerful threat in the Informati...
Android and Windows are the predominant operating systems used in mobile environment and personal co...