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Journal ArticleDOI

Efficiency bounds for distribution-free estimators of the binary choice and the censored regression models

Stephen R. Cosslett
- 01 May 1987 - 
- Vol. 55, Iss: 3, pp 559-585
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TLDR
Lower bounds on the asymptotic variance for regular distribution-free estimators of the parameters of the binary choice model and the censored regression (Tobit) model were derived in this paper.
Abstract
We derive lower bounds on the asymptotic variances for regular distribution-free estimators of the parameters of the binary choice model and the censored regression (Tobit) model. A distribution-free (or semiparametric) estimator is one that does not require any assumption about the distribution of the stochastic error term in the model, apart from regularity conditions. For the binary choice model, we obtain an explicit lower bound for the asymptotic variance for the slope parameters, or more generally the parameters of a nonlinear regression function in the underlying latent variable model, but we find that there is no regular semiparametric estimator of the constant term (identified by requiring the error distribution to have zero median). Lower bounds are also obtained under the further assumption that the error distribution is symmetric, and in this case there is a finite lower bound for the constant term too. Comparison of the bounds with those for the classical parametric problem shows the loss of information due to lack of a priori knowledge of the functional form of the error distribution. We give the conditions for equality of the parametric and semiparametric lower bounds (in which case adaptive estimation may be possible), both with and without the assumption of a symmetric error distribution. In general, adaptive estimation is not possible, but one special case where these conditions hold is when the regression function is linear and the explanatory variables have a multivariate normal distribution. The Tobit model considered here is the censored nonlinear regression model, with a fixed censoring point. We again give an explicit lower bound for the asymptotic variance for the regression parameters, this time including a constant term (if the error term has zero median). Comparison with the corresponding lower bound for the parametric case shows that adaptive estimation is in general not possible for this model.

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Citations
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Journal ArticleDOI

Censored regression quantiles

TL;DR: In this article, the form of the conditional quantiles for the censored regression models is heuristically derived and discussed, and the resulting estimators of the regression coefficients, which include the censored LAD estimator as a special case, are shown to be consistent and asymptotically normally distributed under appropriately translated versions of the corresponding assumptions for the former approach.
Journal ArticleDOI

An efficient semiparametric estimator for binary response models

Roger Klein, +1 more
- 01 Mar 1993 - 
TL;DR: In this article, an estimator for discrete choice models that makes no assumption concerning the functional form of the choice probability function, where this function can be characterized by an index, is proposed.
Book

Nonparametric and Semiparametric Models

TL;DR: In this paper, the authors proposed a nonparametric density estimator based on Histogram and Nonparametric Density Estimation (NDE), and generalized additive models and generalized partial linear models.
Journal ArticleDOI

Optimal Smoothing in Single-index Models

TL;DR: In this article, a simple empirical rule for selecting the bandwidth appropriate to single-index models is proposed, which is studied in a small simulation study and an application in binary response models.
Journal ArticleDOI

A Smoothed Maximum Score Estimator for the Binary Response Model

Joel L. Horowitz
- 01 May 1992 - 
TL;DR: In this paper, a semiparametric estimator for binary response models in which there may be arbitrary heteroskedasticity of unknown form is described. But the estimator is obtained by maximizing a smoothed version of the objective function of C. Manski's maximum score estimator.
References
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Book

Limited-Dependent and Qualitative Variables in Econometrics

G. S. Maddala
TL;DR: In this article, the authors present a survey of the use of truncated distributions in the context of unions and wages, and some results on truncated distribution Bibliography Index and references therein.
Book

The jackknife, the bootstrap, and other resampling plans

Bradley Efron
TL;DR: The Delta Method and the Influence Function Cross-Validation, Jackknife and Bootstrap Balanced Repeated Replication (half-sampling) Random Subsampling Nonparametric Confidence Intervals as mentioned in this paper.
Book

Probability and Measure

TL;DR: In this paper, the convergence of distributions is considered in the context of conditional probability, i.e., random variables and expected values, and the probability of a given distribution converging to a certain value.
Book

Optimization by Vector Space Methods

TL;DR: This book shows engineers how to use optimization theory to solve complex problems with a minimum of mathematics and unifies the large field of optimization with a few geometric principles.
Journal ArticleDOI

Probability and Measure.