Neural networks in statistical anomaly intrusion detection
Document Type
Article
Publication Date
1-1-2001
Abstract
In this paper, we report on experiments in which we used neural networks for statistical anomaly intrusion detection systems. The five types of neural networks that we studied were: Perceptron; Backpropagation; Perceptron-Backpropagation-Hybrid; Fuzzy ARTMAP; and Radial-Based Function. We collected four separate data sets from different simulation scenarios, and these data sets were used to test various neural networks with different hidden neurons. Our results showed that the classification capabilities of BP and PBH outperform those of other neural networks.
Identifier
0034925748 (Scopus)
Publication Title
Neural Network World
ISSN
12100552
First Page
305
Last Page
316
Issue
3
Volume
11
Recommended Citation
Zhang, Z. and Manikopoulos, C., "Neural networks in statistical anomaly intrusion detection" (2001). Faculty Publications. 15330.
https://digitalcommons.njit.edu/fac_pubs/15330
