5 research outputs found

    Generalized Matrix Learning Vector Quantizer for the Analysis of Spectral Data

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    Schneider P, Schleif F-M, Villmann T, Biehl M. Generalized Matrix Learning Vector Quantizer for the Analysis of Spectral Data. In: Verleysen M, ed. Proceedings of the 16th European Symposium on Artificial Neural Networks (ESANN) 2008. Evere, Belgium: d-side publications; 2008: 451-456

    Generalized Matrix Learning Vector Quantizer for the Analysis of Spectral Data

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    The analysis of spectral data constitutes new challenges for machine learning algorithms due to the functional nature of the data. Special attention is paid to the metric used in the analysis. Recently, a prototype based algorithm has been proposed which allows the integration of a full adaptive matrix in the metric. In this contribution we study this approach with respect to band matrices and its use for the analysis of functional spectral data. The method is tested on data taken from food chemistry and satellite image data.
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