Evaluation of feature learning for anomaly detection in network traffic

Volume: 12, Issue: 1, Pages: 79 - 90
Published: Apr 22, 2020
Abstract
The application of anomaly detection approaches to network intrusion detection in real scenarios is difficult. The ability of techniques such as deep learning to estimate new data representations with higher levels of abstraction can be useful to address data analysis of network traffic data. For that reason, the performance of different anomaly detection techniques on feature representations obtained by an autoencoder and a variational...
Paper Details
Title
Evaluation of feature learning for anomaly detection in network traffic
Published Date
Apr 22, 2020
Volume
12
Issue
1
Pages
79 - 90
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