Using sequential deviation to dynamically determine the number of clusters found by a local network neighbourhood artificial immune system
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Date
Authors
Graaff, A.J. (Alexander Jakobus)
Engelbrecht, Andries P.
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
Many of the existing network theory based artificial immune systems have been applied to data
clustering. The formation of artificial lymphocyte (ALC) networks represents potential clusters
in the data. Although these models do not require any user specified parameter of the number of
required clusters to cluster the data, these models do have a drawback in the techniques used to
determine the number of ALC networks. This paper discusses the drawbacks of these techniques
and proposes two alternative techniqueswhich can be used with the local network neighbourhood
artificial immune system. The end result is an enhanced model that can dynamically determine
the number of clusters in a data set.
Description
Keywords
Dynamic clustering, Sequential deviation detection, Immune networks, Clustering performance measures
Sustainable Development Goals
Citation
Graaff, AJ & Engelbrecht, AP 2011, 'Using sequential deviation to dynamically determine the number of clusters found by a local network neighbourhood artificial immune system', Applied Soft Computing, vol. 11, no. 2, pp. 2698-2713. [http://www.elsevier.com/locate/asoc]