2015
DOI: 10.1080/07474938.2015.1114564
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A semiparametric generalized ridge estimator and link with model averaging

Abstract: In recent years, the suggestion of combining models as an alternative to selecting a single model from a frequentist prospective has been advanced in a number of studies. In this paper, we propose a new semi-parametric estimator of regression coe¢ cients, which is in the form of a feasible generalized ridge estimator by Hoerl and Kennard (1970b) but with di¤erent biasing factors. We prove that the generalized ridge estimator is algebraically identical to the model average estimator. Further, the biasing factor… Show more

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Cited by 8 publications
(1 citation statement)
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“…Recently, shrinkage estimators are applied to several general models [see e.g., (Hansen 2016a(Hansen , 2017]. Also, it is well known some recent techniques including LASSO, SCAD and model averaging can be considered as kinds of shrinkage estimation [see, e.g., Fan and Li (2001), Hansen (2016b), Tibshirani (1996), Ullah et al (2016) and Zou (2006)]. In particular, extending the idea of Hausman (1978) pre-test in Guggenberger (2010), Hansen (2017) proposed an estimator which consists of the ordinary least squares estimator and the two-stage least squares estimator under the assumption that the correlation coefficient is local to zero.…”
Section: Introductionmentioning
confidence: 99%
“…Recently, shrinkage estimators are applied to several general models [see e.g., (Hansen 2016a(Hansen , 2017]. Also, it is well known some recent techniques including LASSO, SCAD and model averaging can be considered as kinds of shrinkage estimation [see, e.g., Fan and Li (2001), Hansen (2016b), Tibshirani (1996), Ullah et al (2016) and Zou (2006)]. In particular, extending the idea of Hausman (1978) pre-test in Guggenberger (2010), Hansen (2017) proposed an estimator which consists of the ordinary least squares estimator and the two-stage least squares estimator under the assumption that the correlation coefficient is local to zero.…”
Section: Introductionmentioning
confidence: 99%