Computer Science – Neural and Evolutionary Computing
Scientific paper
2007-09-23
Neurocomputing 64 (2005) 183--210
Computer Science
Neural and Evolutionary Computing
Also available online from: http://www.sciencedirect.com/science/journal/09252312
Scientific paper
10.1016/j.neucom.2004.11.012
Functional Data Analysis (FDA) is an extension of traditional data analysis to functional data, for example spectra, temporal series, spatio-temporal images, gesture recognition data, etc. Functional data are rarely known in practice; usually a regular or irregular sampling is known. For this reason, some processing is needed in order to benefit from the smooth character of functional data in the analysis methods. This paper shows how to extend the Radial-Basis Function Networks (RBFN) and Multi-Layer Perceptron (MLP) models to functional data inputs, in particular when the latter are known through lists of input-output pairs. Various possibilities for functional processing are discussed, including the projection on smooth bases, Functional Principal Component Analysis, functional centering and reduction, and the use of differential operators. It is shown how to incorporate these functional processing into the RBFN and MLP models. The functional approach is illustrated on a benchmark of spectrometric data analysis.
Conan-Guez Brieuc
Delannay Nicolas
Rossi Fabrice
Verleysen Michel
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