A Batch Learning Vector Quantization Algorithm for Nearest Neighbour Classification
作者:Sergio Bermejo, Joan Cabestany
摘要
We introduce a batch learning algorithm to design the set of prototypes of 1 nearest-neighbour classifiers. Like Kohonen's LVQ algorithms, this procedure tends to perform vector quantization over a probability density function that has zero points at Bayes borders. Although it differs significantly from their online counterparts since: (1) its statistical goal is clearer and better defined; and (2) it converges superlinearly due to its use of the very fast Newton's optimization method. Experiments results using artificial data confirm faster training time and better classification performance than Kohonen's LVQ algorithms.
论文关键词:Learning Vector Quantization, Newton's optimization, nearest neighbour classification, batch learning algorithms
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论文官网地址:https://doi.org/10.1023/A:1009634824627