Multivariate-multiple circular regression |
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Authors: | Sungsu Kim Ashis SenGupta |
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Affiliation: | 1. Department of Mathematics, University of Louisiana, Lafayette, LA, USAdr.sungsu@gmail.com;3. Applied Statistics Unit, Indian Statistical Institute, Kolkata, India;4. Department of Biostatistics and Epidemiology, Augusta University, Augusta, GA, USA |
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Abstract: | We introduce a fully model-based approach of studying functional relationships between a multivariate circular-dependent variable and several circular covariates, enabling inference regarding all model parameters and related prediction. Two multiple circular regression models are presented for this approach. First, for an univariate circular-dependent variable, we propose the least circular mean-square error (LCMSE) estimation method, and asymptotic properties of the LCMSE estimators and inferential methods are developed and illustrated. Second, using a simulation study, we provide some practical suggestions for model selection between the two models. An illustrative example is given using a real data set from protein structure prediction problem. Finally, a straightforward extension to the case with a multivariate-dependent circular variable is provided. |
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Keywords: | Circular regression circular variable mean-square error multiple regression multivariate regression |
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