Sciweavers

EC
2007

Revisiting Negative Selection Algorithms

13 years 11 months ago
Revisiting Negative Selection Algorithms
This paper reviews the progress of negative selection algorithms, an anomaly/change detection approach in Artificial Immune Systems (AIS). Following its initial model, we try to identify the fundamental characteristics of this family of algorithms and summarize their diversities. There exist various elements in this method, including data representation, coverage estimate, affinity measure, and matching rules, which are discussed for different variations. The various negative selection algorithms are categorized by different criteria as well. The relationship and possible combinations with other AIS or other machine learning methods are discussed. Prospective development and applicability of negative selection algorithms and their influence on related areas are then speculated based on the discussion. Keywords Artificial immune systems, negative selection algorithms, machine learning.
Zhou Ji, Dipankar Dasgupta
Added 13 Dec 2010
Updated 13 Dec 2010
Type Journal
Year 2007
Where EC
Authors Zhou Ji, Dipankar Dasgupta
Comments (0)