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πŸ“

Semiparametric and Nonparametric Econometrics

✍ Scribed by Joel L. Horowitz (auth.), Aman Ullah (eds.)


Publisher
Physica-Verlag Heidelberg
Year
1989
Tongue
English
Leaves
179
Series
Studies in Empirical Economics
Edition
1
Category
Library

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✦ Synopsis


Over the last three decades much research in empirical and theoretical economics has been carried on under various assumptions. For example a parametric functional form of the regression model, the heteroskedasticity, and the autocorrelation is always asΒ­ sumed, usually linear. Also, the errors are assumed to follow certain parametric distriΒ­ butions, often normal. A disadvantage of parametric econometrics based on these assumptions is that it may not be robust to the slight data inconsistency with the particular parametric specification. Indeed any misspecification in the functional form may lead to erroneous conclusions. In view of these problems, recently there has been significant interest in 'the semiparametric/nonparametric approaches to econometrics. The semiparametric approach considers econometric models where one component has a parametric and the other, which is unknown, a nonparametric specification (Manski 1984 and Horowitz and Neumann 1987, among others). The purely nonΒ­ parametric approach, on the other hand, does not specify any component of the model a priori. The main ingredient of this approach is the data based estimation of the unknown joint density due to Rosenblatt (1956). Since then, especially in the last decade, a vast amount of literature has appeared on nonparametric estimation in statistics journals. However, this literature is mostly highly technical and this may partly be the reason why very little is known about it in econometrics, although see Bierens (1987) and Ullah (1988).

✦ Table of Contents


Front Matter....Pages I-VII
The Asymptotic Efficiency of Semiparametric Estimators for Censored Linear Regression Models....Pages 1-18
Nonparametric Kernel Estimation Applied to Forecasting: An Evaluation Based on the Bootstrap....Pages 19-32
Calibrating Histograms with Application to Economic Data....Pages 33-46
The Role of Fiscal Policy in the St. Louis Model: Nonparametric Estimates for a Small Open Economy....Pages 47-64
Automatic Smoothing Parameter Selection: A Survey....Pages 65-86
Bayes Prediction Density and Regression Estimation β€” A Semiparametric Approach....Pages 87-100
Nonparametric Estimation and Hypothesis Testing in Econometric Models....Pages 101-127
Some Simulation Studies of Nonparametric Estimators....Pages 129-144
Estimating a Hedonic Earnings Function with a Nonparametric Method....Pages 145-172
Back Matter....Pages 173-174

✦ Subjects


Economic Theory


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