
pmid: 16402629
In this paper, we propose a method that selects a subset of the training data points to update LVQ prototypes. The main goal is to conduct the prototypes to converge at a more convenient location, diminishing misclassification errors. The method selects an update set composed by a subset of points considered to be at the risk of being captured by another class prototype. We associate the proposed methodology to a weighted norm, instead of the Euclidean, in order to establish different levels of relevance for the input attributes. The technique was implemented on a controlled experiment and on Web available data sets.
Artificial Intelligence, Systems Theory, Computer Simulation, Models, Theoretical, Computing Methodologies, Algorithms, Pattern Recognition, Automated
Artificial Intelligence, Systems Theory, Computer Simulation, Models, Theoretical, Computing Methodologies, Algorithms, Pattern Recognition, Automated
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