Authors
R Vinayakumar, KP Soman, Prabaharan Poornachandran, S Sachin Kumar
Publication date
2018/1/1
Journal
Journal of Intelligent & Fuzzy Systems
Volume
34
Issue
3
Pages
1265-1276
Publisher
IOS Press
Description
In recent years, domain generation algorithms (DGAs) are the foundational mechanisms for many malware families. Mainly, due to the fact that DGA can generate immense number of pseudo random domain names to associate to a command and control (C2) infrastructures. This paper focuses on to detect and classify the pseudo random domain names without relying on the feature engineering or any other linguistic, contextual or semantics and statistical information by adopting deep learning approaches. A deep learning approach is a complex model of traditional machine learning mechanism that has received renewed interest by solving the long-standing tasks in artificial intelligence (AI) related to the field of natural language processing, image recognition, speech processing and many others. They have immense capability to extract optimal feature representations by taking input as in the form of raw input …
Total citations
201820192020202120222023202412161491093
Scholar articles
R Vinayakumar, KP Soman, P Poornachandran… - Journal of Intelligent & Fuzzy Systems, 2018