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Improved Jive estimators for overidentified linear models with and without heteroskedasticity
Author(s)
Date Issued
2008-08
Date Available
2008-12-12T15:25:09Z
Abstract
We introduce two simple new variants of the Jackknife Instrumental Variables (JIVE) estimator for overidentified linear models and show that they are superior to the existing JIVE estimator, significantly
improving on its small sample bias properties. We also compare our new estimators to existing Nagar (1959) type estimators. We show that, in models with heteroskedasticity, our estimators have
superior properties to both the Nagar estimator and the related B2SLS estimator suggested in Donald and Newey (2001). These theoretical results are verified in a set of Monte-Carlo experiments and then applied to estimating the returns to schooling using actual data.
improving on its small sample bias properties. We also compare our new estimators to existing Nagar (1959) type estimators. We show that, in models with heteroskedasticity, our estimators have
superior properties to both the Nagar estimator and the related B2SLS estimator suggested in Donald and Newey (2001). These theoretical results are verified in a set of Monte-Carlo experiments and then applied to estimating the returns to schooling using actual data.
Type of Material
Working Paper
Publisher
University College Dublin. School of Economics
Series
UCD Centre for Economic Research Working Paper Series
WP08/17
Copyright (Published Version)
UCD School of Economics 2008
Classification
C310
J240
Subject – LCSH
Jackknife (Statistics)
Linear models (Statistics)
Human capital--Mathematical models
Language
English
Status of Item
Not peer reviewed
This item is made available under a Creative Commons License
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