Galtonian regression of intergenerational income linkages : biased procedures, a new estimator and mean-square error comparisons

Details

Serval ID
serval:BIB_74598FEF165A
Type
Book:A book with an explicit publisher.
Collection
Publications
Title
Galtonian regression of intergenerational income linkages : biased procedures, a new estimator and mean-square error comparisons
Author(s)
Abul Naga  Ramses H.
Publisher
Université de Lausanne Ecole des HEC/DEEP
Address of publication
Lausanne
Publication state
Published
Issued date
2000
Series
Cahiers de recherches économiques
Notes
/ Ramses H. Abul Naga
Date de publication : 2000
Signature indexation : ind 20070201
Collection_ISBD : (Cahiers de recherches économiques ; no 00.13 )
2007/2/1
Monographie | Bibliothèque : DI Hospices/CHUV | Cote : PUB-WP | N° 60347
26 p.
Abul Naga, Ramses H.
Collection : Cahiers de recherches économiques ; no 00.13
Abstract
Because the permanent incomes of parents are children are typically unobserved, the estimation of the intergenerational correlation via the use of proxy variables entails an errors-in-variables bias. By solving a system of moment equations for income observed at a given year, and a T-period average of this variable, we derive an analytical form for the signal to total variance ratio. In turn, we propose a simple estimator of the intergenerational elasticity via division of the OLS estimator by this quantity. Estimates of the intergenerational elasticity derived from a PSID sample range between 0.34 and 0.69. The averaging estimator provides intermediary values between OLS and the proposed estimator. Persistence is higher for family income measures than labor market outcomes. Estimates generally increase for moving average specifications in comparison to the assumption that measurement errors are uncorrelated. The three estimators are further examined in the light of their mean-square errors (square bias plus variance).
Keywords
Income Intergenerational Relations
Create date
19/11/2007 11:33
Last modification date
20/08/2019 15:32
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