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The Self-Organizing Maps: Background,
Theories, Extensions and Applications
Hujun Yin
School of Electrical and Electronic Engineering, The University of Manchester,
M60 1QD, UK, hujun.yin@manchester.ac.uk
1 Introduction
For many years, artificial neural networks (ANNs) h e been studied and
used to model information processing systems based on or inspired by bio-
logical neural structures. They not only can provide solutions with improved
performance when compared with traditional problem-solving methods, but
also give a deeper understanding of human cognitive abilities. Among various
existing neural network architectures and learning algorithms, Kohonen’s self-
organizing map (SOM) [46] is one of the most popular neural network models.
Developed for an associative memory model, it is an unsupervised learning
algorithm with a simple structure and computational form, and is motivated
by the retina-cortex mapping. Self-organization in general is a fundamental
pattern recognition process, in which intrinsic inter- and intra-pattern rela-
tionships among the stimuli and responses are learnt without the presence
of a potentially biased or subjective external influence. The SOM can pro-
vide topologically p mapping from input to output spaces. Although
the computational form of the SOM is very simple, numerous researchers
h e already examined the algorithm and many of its problems, nevertheless
research in this area goes deeper and deeper – there are still many aspects to
be exploited.
In this Chapter, we review the background, theories and statistical proper-
ties of this important learning model and present recent advances from various
pattern recognition aspects through a number of case studies and applications.
The SOM is optimal for vector quantization. Its topographical ordering pro-
vides the mapping with enhanced fault- an
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