A supervised classifier scheme based on clustering algorithms

Central America and Panama Convention(2014)

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Abstract
This paper proposes a new classifier scheme based on classical clustering algorithms, such as the Batchelor & Wilkins y K-means algorithms which are trained in a similar form that the artificial neural network (ANN) or support vector machines (SVM). Proposed scheme has the advantage that if a new class is added, it is not necessary to train he classifier completely, but only add a new class. Experimental results show that the proposed scheme provides classification rates quite similar to those provided by the SVM with much less computational complexity.
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Key words
computational complexity,neural nets,pattern classification,support vector machines,ann,svm,artificial neural network,classical clustering algorithms,classification rates,k-means algorithms,supervised classifier scheme,supervised training,pattern recognition,self-organizing maps,artificial neural networks,clustering algorithms,silicon
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