Consistance d'un estimateur de minimum de variance \'etendue
classification
🧮 math.ST
stat.TH
keywords
varianceminimumneighborhoodusedalgorithmalmostassumecalculus
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We consider a generalization of the criterion minimized by the K-means algorithm, where a neighborhood structure is used in the calculus of the variance. Such tool is used, for example with Kohonen maps, to measure the quality of the quantification preserving the neighborhood relationships. If we assume that the parameter vector is in a compact Euclidean space and all it components are separated by a minimal distance, we show the strong consistency of the set of parameters almost realizing the minimum of the empirical extended variance.
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