학술논문

Detection of Unknown DDoS Attacks with Deep Learning and Gaussian Mixture Model
Document Type
Conference
Source
2021 4th International Conference on Information and Computer Technologies (ICICT) ICICT Information and Computer Technologies (ICICT), 2021 4th International Conference on. :27-32 Mar, 2021
Subject
Computing and Processing
Deep learning
Computational modeling
Intrusion detection
Denial-of-service attack
Internet
Complexity theory
Security
cyber-attacks
deep learning
open-set recognition
Language
Abstract
The development of the Internet has facilitated our daily communication. However, crises of security also rise at the same time. DDoS (Distributed Denial of Service) is one of the most destructive attacks among others. Nowadays, deep learning has been applied to intrusion detection and achieves a satisfactory detection rate. However, most of the related works suffer from the problem of Open-Set Recognition. No particular measure is taken for unknown attacks, which leads to the reduction of model generalization ability. The complexity of today's networks is continuously increasing. To maintain the generalization ability, it is necessary to find a method that can handle unknown traffic. This paper uses time series-based BI-LSTM (Bidirectional LSTM) for attack detection. It incorporates the concept of open-set recognition and the Gaussian mixture model for unknown attack detection. It then uses progressive learning to update the model to maintain the accuracy of the model. Experiment results reveal that the proposed scheme can detect unknown attacks with a detection probability close to 99%.