Bayesian nonparametric classification for spectroscopy data
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2014Metadata
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Gutiérrez, Luis
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Bayesian nonparametric classification for spectroscopy data
Abstract
High-dimensional spectroscopy data are increasingly common in many fields of science.
Building classification models in this context is challenging, due not only to high dimensionality
but also to high autocorrelations. A two-stage classification strategy is proposed.
First, in a data pre-processing step, the dimensionality of the data is reduced using one of
two distinct methods. The output of either of these methods is then used to feed a classification
procedure that uses a multivariate density estimate from a Bayesian nonparametric
mixture model for discrimination purposes. The model employed is based on a random
probability measure with decreasing weights. This nonparametric prior is chosen so as to
ease the identifiability and label switching problems inherent to these models. This simple
and flexible classification strategy is applied to the well-known ‘meat’ data set. The results
are similar or better than previously reported in the literature for the same data.
General note
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Patrocinador
The first author was partially funded by Program U-INICIA VID 2011, grant U-INICIA
02/12A, University of Chile. The work of the second author was partially supported by Sistema Nacional de Investigadores
grant 10827 and PAPIIT project IN106114-3, Mexico. The third author gratefully acknowledges the support by Consejo
Nacional de Ciencia y Tecnología – National Council of Science and Technology project 131179.
Identifier
URI: https://repositorio.uchile.cl/handle/2250/129368
DOI: DOI: 10.1016/j.csda.2014.04.010
Quote Item
Computational Statistics and Data Analysis 78 (2014) 56–68
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