DocumentCode
2452561
Title
Explicit class structure with closeness and similarity between neurons
Author
Kamimura, Ryotaro
Author_Institution
IT Educ. Center, Tokai Univ., Hiratsuka, Japan
fYear
2011
fDate
19-21 Oct. 2011
Firstpage
92
Lastpage
98
Abstract
We have so far introduced the concept of individually and collectively treated neurons to produce explicit class structure in SOM. Though it has produced explicit class boundaries in many well-known benchmark data, the introduction of the individually treated neurons have naturally reduced the topographical preservation. To overcome this shortcoming, we introduce closeness and similarity between neurons in learning. Neurons are more collectively connected when neurons are close and similar to each other. We applied the method to the well-known Iris and voting data in machine learning database to examine whether the new method is effective in producing explicit class structure with good topological preservation. Preliminary experimental results confirmed that class boundaries were made explicit by the interaction of ITN with CTN with closeness and similarity between neurons. In addition, improved performance could be obtained in terms of quantization, topological, training and generalization errors.
Keywords
learning (artificial intelligence); pattern matching; self-organising feature maps; topology; CTN; ITN; SOM; benchmark data; explicit class structure; iris data; machine learning database; neuron similarity; topographical preservation; voting data; Data visualization; Iris; Mutual information; Neurons; Quantization; Self organizing feature maps; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Nature and Biologically Inspired Computing (NaBIC), 2011 Third World Congress on
Conference_Location
Salamanca
Print_ISBN
978-1-4577-1122-0
Type
conf
DOI
10.1109/NaBIC.2011.6089423
Filename
6089423
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