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Measuring the Discrepancy of a Parametric Model via Local Polynomial Smoothing
Authors:ANOUAR EL GHOUCH  MARC G GENTON  TAOUFIK BOUEZMARNI
Institution:1. Université catholique de Louvain;2. Texas A&M University;3. Université de Sherbrooke
Abstract:Abstract. In the context of multivariate mean regression, we propose a new method to measure and estimate the inadequacy of a given parametric model. The measure is basically the missed fraction of variation after adjusting the best possible parametric model from a given family. The proposed approach is based on the minimum L 2 ‐distance between the true but unknown regression curve and a given model. The estimation method is based on local polynomial averaging of residuals with a polynomial degree that increases with the dimension d of the covariate. For any d ≥ 1 and under some weak assumptions we give a Bahadur‐type representation of the estimator from which inline image‐consistency and asymptotic normality are derived for strongly mixing variables. We report the outcomes of a simulation study that aims at checking the finite sample properties of these techniques. We present the analysis of a dataset on ultrasonic calibration for illustration.
Keywords:explanatory power  inadequacy index  model misspecification  multivariate local polynomial smoothing  strong mixing sequence  validation test
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