3.8 Proceedings Paper

Deep Learning Framework for Domain Generation Algorithms Prediction Using Long Short-term Memory

出版社

IEEE
DOI: 10.1109/icaccs.2019.8728544

关键词

Cyber Security; Cybercrime; Domain Generation Algorithm (DGA); Malware; Botnet; Long Short-Term Memory (LSTM)

资金

  1. Paramount Computer Systems
  2. NVIDIA India
  3. Lakhshya Cyber Security Labs

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Real-time prediction of domain names that are generated using the Domain Generation Algorithms (DGAs) is a challenging cyber security task. Scope to collect the vast amount of data for training favored data-driven techniques and deep learning architectures have the potential to address this challenge. This paper proposes a deep learning framework using long short-term memory (LSTM) architecture for prediction of the domain names that are generated using the DGAs. Binary classification had benign and DGA domain names and multiclass classification was performed using 20 different DGAs. For the binary classification, LSTM model gave accuracy of 98.7% and 71.3% on two different test data sets and for the multi-class classification, it gave accuracy of 68.3% and 67.0% respectively. Two diversified data sets were used to analyze the robustness of the LSTM architecture.

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