Title
Identifying data streams anomalies by evolving spiking restricted Boltzmann machines
Abstract
Data streams are characterized by high volatility, and they drastically change in an unpredictable way over time. In the typical case, newer data are the most important, as the concept of aging is based on their timing. These flows require real-time processing in order to extract meaningful information that will allow for essential and targeted responses to changing circumstances. Knowledge mining is a real-time process performed on a subset of the data streams, which contains a small but recent part of the observations. Timely security requirements call for further quest of optimal approaches, capable of improving the reliability and the accuracy of the employed classifiers. This research introduces a real-time evolving spiking restricted Boltzmann machine approach, for efficient anomaly detection in data streams. Testing has proved that the proposed algorithm maximizes the classification accuracy and at the same time minimizes the computational resources requirements. A comparative analysis has shown that it outperforms other data flow analysis algorithms.
Year
DOI
Venue
2020
10.1007/s00521-019-04288-5
Neural Computing and Applications
Keywords
DocType
Volume
Big Data, Data streams analysis, Evolving spiking neural networks, Restricted Boltzmann machines, Deep learning, Real-time anomaly detection
Journal
32
Issue
ISSN
Citations 
11
0941-0643
1
PageRank 
References 
Authors
0.36
10
3
Name
Order
Citations
PageRank
Li-ning Xing122921.43
Konstantinos Demertzis28915.30
Jinghui Yang331.81