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Cybernetics / Computational statistics / Machine learning / Neuroscience / Statistical classification / SOM / Artificial neural network / Computational neuroscience / Neural networks / Statistics
Date: 2005-02-08 05:38:26
Cybernetics
Computational statistics
Machine learning
Neuroscience
Statistical classification
SOM
Artificial neural network
Computational neuroscience
Neural networks
Statistics

Artificial Neural Networks - Lab 6 Analysis of odour patterns using self-organising feature maps Purpose To study classification and novelty detection using self-organising feature maps on a real application, using odour

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