Title of article :
Model-based classification using latent Gaussian mixture models
Author/Authors :
McNicholas، نويسنده , , Paul D.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
7
From page :
1175
To page :
1181
Abstract :
A novel model-based classification technique is introduced based on parsimonious Gaussian mixture models (PGMMs). PGMMs, which were introduced recently as a model-based clustering technique, arise from a generalization of the mixtures of factor analyzers model and are based on a latent Gaussian mixture model. In this paper, this mixture modelling structure is used for model-based classification and the particular area of application is food authenticity. Model-based classification is performed by jointly modelling data with known and unknown group memberships within a likelihood framework and then estimating parameters, including the unknown group memberships, within an alternating expectation-conditional maximization framework. Model selection is carried out using the Bayesian information criteria and the quality of the maximum a posteriori classifications is summarized using the misclassification rate and the adjusted Rand index. This new model-based classification technique gives excellent classification performance when applied to real food authenticity data on the chemical properties of olive oils from nine areas of Italy.
Keywords :
Factor Analysis , Food authenticity , Model-based classification , Parsimonious Gaussian mixture models (PGMMs) , Classification , Model-based clustering , Mixture models
Journal title :
Journal of Statistical Planning and Inference
Serial Year :
2010
Journal title :
Journal of Statistical Planning and Inference
Record number :
2220573
Link To Document :
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