A Procedure for Identification of Principal Variables by Least Generalized Dependence |
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Authors: | B. K. Hooda K. Mishra |
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Affiliation: | Department of Mathematics and Statistics , CCS Haryana Agricultural University , Hisar, India |
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Abstract: | Principal components are often used for reducing dimensions in multivariate data, but they frequently fail to provide useful results and their interpretation is rather difficult. In this article, the use of entropy optimization principles for dimensional reduction in multivariate data is proposed. Under the assumptions of multivariate normality, a four-step procedure is developed for selecting principal variables and hence discarding redundant variables. For comparative performance of the information theoretic procedure, we use simulated data with known dimensionality. Principal variables of cluster bean (Guar) are identified by applying this procedure to a real data set generated in a plant breeding experiment. |
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Keywords: | Cluster bean Entropy optimization Generalized dependence Multivariate analysis Principal component analysis Principal variables |
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