Variable Selection and Updating in Model-based Discriminant Analysis for High Dimensional Data with Food Authenticity Applications by Thomas
نویسندگان
چکیده
Food authenticity studies are concerned with determining if food samples have been correctly labeled or not. Discriminant analysis methods are an integral part of the methodology for food authentication. Motivated by food authenticity applications, a model-based discriminant analysis method that includes variable selection is presented. The discriminant analysis model is fitted in a semi-supervised manner using both labeled and unlabeled data. The method is shown to give excellent classification performance on several high-dimensional multiclass food authenticity data sets with more variables than observations. The variables selected by the proposed method provide information about which variables are meaningful for classification purposes. A headlong search strategy for variable selection is shown to be efficient in terms of computation and achieves excellent classification performance. In applications to several food authenticity data sets, our proposed method outperformed default implementations of Random Forests, AdaBoost, transductive SVMs and Bayesian Multinomial Regression by substantial margins.
منابع مشابه
Variable Selection and Updating In Model-Based Discriminant Analysis for High Dimensional Data with Food Authenticity Applications.
Food authenticity studies are concerned with determining if food samples have been correctly labelled or not. Discriminant analysis methods are an integral part of the methodology for food authentication. Motivated by food authenticity applications, a model-based discriminant analysis method that includes variable selection is presented. The discriminant analysis model is fitted in a semi-super...
متن کاملVariable Selection and Updating in Model-based Discriminant Analysis for High Dimensional Data with Food Authenticity
متن کامل
Variable Selection and Updating In Model-Based Discriminant Analysis for High-Dimensional Data
A model-based discriminant analysis method that includes variable selection is presented. The discriminant analysis model is fitted in a semi-supervised manner using both labeled and unlabeled data. The method is shown to give excellent classification performance on several high-dimensional multiclass datasets with more variables than observations. The variables selected by the proposed method ...
متن کاملUsing Unlabelled Data To Update Classification Rules With Applications In Food Authenticity Studies
A classification method is developed to classify samples when both labelled and unlabelled samples are available. The classification rule is estimated using both the labelled and unlabelled data, in contrast to many classical methods which only use the labelled data for estimation. This methodology models the data as arising from a Gaussian mixture model with parsimonious covariance structure, ...
متن کاملSupervised Feature Extraction of Face Images for Improvement of Recognition Accuracy
Dimensionality reduction methods transform or select a low dimensional feature space to efficiently represent the original high dimensional feature space of data. Feature reduction techniques are an important step in many pattern recognition problems in different fields especially in analyzing of high dimensional data. Hyperspectral images are acquired by remote sensors and human face images ar...
متن کامل