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Using Hierarchical Temporal Memory for Detecting Anomalous Network Activity
Using Hierarchical Temporal Memory for Detecting Anomalous Network Activity
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This research is motivated by the creation of intelligently autonomous cybercraft to reside in the intangible environment of cyberspace and maintain domain superiority. Specifically, this paper offers 7 challenges to the development of such a cybercraft. The focus is analysis of the claims Hierarchical Temporal Memory (HTM). In particular, HTM theory claims to facilitate intelligence in machines via accurate predictions. It further claims to be able to make accurate predictions of unusual worlds, like cyberspace. The primary objective is to provide evidence that HTM facilitates accurate predictions of unusual worlds. The second objective is to lend evidence that prediction is a good indication of intelligence. A commercial implementation of HTM theory is tested as an anomaly detection system and its ability to define network traffic (a major aspect of cyberspace) as benign or malicious is evaluated. Through the course of testing the performance of this implementation is poor. An independent algorithm is developed from a variant understanding of HTM theory. This alternate algorithm is independent of cyberspace and developed solely (but also in a contrived abstract world) to lend credibility to the use of prediction as a method of testing intelligence.
Author: Gerod M. Bonhoff
Publisher: Biblioscholar
Published: 11/19/2012
Pages: 160
Binding Type: Paperback
Weight: 0.66lbs
Size: 9.69h x 7.44w x 0.34d
ISBN: 9781288319954
Author: Gerod M. Bonhoff
Publisher: Biblioscholar
Published: 11/19/2012
Pages: 160
Binding Type: Paperback
Weight: 0.66lbs
Size: 9.69h x 7.44w x 0.34d
ISBN: 9781288319954
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