Title of article
Partial correlation metric based classifier for food product characterization Original Research Article
Author/Authors
A. Setiawan Melissa، نويسنده , , K. Rao Raghuraj، نويسنده , , S. Lakshminarayanan، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
7
From page
146
To page
152
Abstract
Data classification algorithms applied to multidimensional and multiclass food characterization problems mainly assume feature independency to quantify intra-class similarity or inter-class dissimilarities. As an alternative, possible class specific inter-relations among the feature vectors can be exploited for distinguishing samples into specific classes. Based on this idea, a new partial correlation coefficient metric (PCCM) based classification method is proposed. Existence of such inter-variable correlations as signatures of unique classes is established with illustrative problems. Categorized variable dependency structures are hypothesized as the basis for class discrimination. Two food quality analysis datasets with chemometrics importance are utilized as benchmark problems to compare the performance of new method with classification algorithms like LDA (linear discriminant analysis), CART, Treenet and SVM (support vector machines). The PCCM method is observed to perform well for different tests over large sets of classification experiments. Discriminating PCCM classifier also provides a quick visualization tool to diagnose complex classification problems.
Keywords
Food products , Quality classification , discriminant analysis , Partial correlations
Journal title
Journal of Food Engineering
Serial Year
2008
Journal title
Journal of Food Engineering
Record number
1168049
Link To Document