A Neural Network Anomaly Detector Using the Random Cluster Model
Abstract
The random cluster model is used to define an upper bound on a distance measure as a function of the number of data points to be classified and the expected value of the number of classes to form in a hybrid K-means and regression classification methodology, with the intent of detecting anomalies. Conditions are given for the identification of classes which contain anomalies and individual anomalies within identified classes. A neural network model describes the decision region-separating surface for offline storage and recall in any new anomaly detection.
Cite
@article{arxiv.1501.07227,
title = {A Neural Network Anomaly Detector Using the Random Cluster Model},
author = {Robert A. Murphy},
journal= {arXiv preprint arXiv:1501.07227},
year = {2016}
}
Comments
These writings are part of a longer writing which has been submitted for publication. I plan to replace this writing (and the other 2 writings) with the single writing that has been submitted for publication. The other writings to be withdrawn are 1503.03488 and 1412.4178