Partially Adaptive Estimation Via Maximum Entropy Densities

24 Pages Posted: 4 Apr 2005

See all articles by Ximing Wu

Ximing Wu

Texas A&M University - Department of Agricultural Economics

Thanasis Stengos

University of Guelph - Department of Economics

Date Written: March 1, 2005

Abstract

We propose a partially adaptive estimator based on information theoretic maximum entropy estimates of the error distribution. The maximum entropy (maxent) densities have simple yet flexible functional forms to nest most of the mathematical distributions. Unlike the nonparametric fully adaptive estimators, our parametric estimators do not involve choosing a bandwidth or trimming, and only require estimating a small number of nuisance parameters, which is desirable when the sample size is small. Monte Carlo simulations suggest that the proposed estimators fare well with non-normal error distributions. When the errors are normal, the efficiency loss due to redundant nuisance parameters is negligible as the proposed error densities nest the normal. The proposed partially adaptive estimator compares favorably with existing methods, especially when the sample size is small. We apply the estimator to a bio-pharmaceutical example and a stochastic frontier model.

Keywords: Adaptive estimation, maximum entropy density

JEL Classification: C13

Suggested Citation

Wu, Ximing and Stengos, Thanasis, Partially Adaptive Estimation Via Maximum Entropy Densities (March 1, 2005). Available at SSRN: https://ssrn.com/abstract=682683 or http://dx.doi.org/10.2139/ssrn.682683

Ximing Wu (Contact Author)

Texas A&M University - Department of Agricultural Economics ( email )

College Station, TX 77843-4218
United States

HOME PAGE: http://agecon2.tamu.edu/people/faculty/wu-ximing/

Thanasis Stengos

University of Guelph - Department of Economics ( email )

50 Stone Road East
Guelph, Ontario N1G 2W1
Canada

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