Efficiency of the QR class estimator in semiparametric regression models to combat multicollinearity |
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Authors: | Mahdi Roozbeh Mohammad Najarian |
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Institution: | 1. Department of Statistics, Faculty of Mathematics, Statistics and Computer Sciences, Semnan University, Semnan, Iran;2. Department of Industrial Engineering, Cullen College of Engineering, University of Houston, Houston, TX, USA |
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Abstract: | There are some classes of biased estimators for solving the multicollinearity among the predictor variables in statistical literature. In this research, we propose a modified estimator based on the QR decomposition in the semiparametric regression models, to combat the multicollinearity problem of design matrix which makes the data to be less distorted than the other methods. We derive the properties of the proposed estimator, and then, the necessary and sufficient condition for the superiority of the partially generalized QR-based estimator over partially generalized least-squares estimator is obtained. In the biased estimators, selection of shrinkage parameters plays an important role in data analysing. We use generalized cross-validation criterion for selecting the optimal shrinkage parameter and the bandwidth of the kernel smoother. Finally, the Monté-Carlo simulation studies and a real application related to bridge construction data are conducted to support our theoretical discussion. |
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Keywords: | Generalized ridge estimation kernel smoothing multicollinearity QR decomposition shrinkage parameter |
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