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Asymptotic efficiency of ridge estimator in linear and semiparametric linear models
Authors:June Luo
Institution:
  • Clemson University, Department of Mathematical Sciences, United States
  • Abstract:The linear model with a growing number of predictors arises in many contemporary scientific endeavor. In this article, we consider the commonly used ridge estimator in linear models. We propose analyzing the ridge estimator for a finite sample size n and a growing dimension p. The existence and asymptotic normality of the ridge estimator are established under some regularity conditions when p. It also occurs that a strictly linear model is inadequate when some of the relations are believed to be of certain linear form while others are not easily parameterized, and thus a semiparametric partial linear model is considered. For these semiparametric partial linear models with p>n, we develop a procedure to estimate the linear coefficients as if the nonparametric part is not present. The asymptotic efficiency of the proposed estimator for the linear component is studied for p. It is shown that the proposed estimator of the linear component asymptotically performs very well.
    Keywords:High dimension  Ridge estimator  Differencing sequence  Continuity
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