Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation

The main goal of this article is to propose estimators for the Spatial Lag Model (SLM) under missing data context. We present three alternatives estimators for the SLM based on Two Stage Least Squares estimation methodology. The estimators are eÿcient within their type and consistent under random mi...

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Main Author: Alejandro Izaguirre
Format: Article
Language:English
Published: Pontificia Universidad Católica del Perú 2021-05-01
Series:Economía
Subjects:
Online Access:http://revistas.pucp.edu.pe/index.php/economia/article/view/23710
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spelling doaj-63f21aaf44aa4d82b15a55e1c233c11f2021-05-07T19:04:08ZengPontificia Universidad Católica del PerúEconomía0254-44152304-43062021-05-014487Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with ImputationAlejandro Izaguirre0Universidad de San AndrésThe main goal of this article is to propose estimators for the Spatial Lag Model (SLM) under missing data context. We present three alternatives estimators for the SLM based on Two Stage Least Squares estimation methodology. The estimators are eÿcient within their type and consistent under random missing data in the dependent variable. Unlike the IBG2SLS estimator presented in Wang and Lee (2013) which impute all missing data we only impute missing data in the spatial lag. Our first proposal is an alternative version of the IBG2SLS estimator, the second one is based on an approximation to the optimal instruments matrix and the third one is an alternative equivalent to the first. Thorough a Monte Carlo simulation we assess the estimators performance under finite samples. Results show a good performance for all estimators, moreover, results are quite similar to the IBG2SLS estimator suggesting that a complete imputation (as IBG2SLS does) does not add information. http://revistas.pucp.edu.pe/index.php/economia/article/view/23710Random missing dataTwo stage estimatorsImputationSpatial lag model
collection DOAJ
language English
format Article
sources DOAJ
author Alejandro Izaguirre
spellingShingle Alejandro Izaguirre
Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
Economía
Random missing data
Two stage estimators
Imputation
Spatial lag model
author_facet Alejandro Izaguirre
author_sort Alejandro Izaguirre
title Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
title_short Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
title_full Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
title_fullStr Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
title_full_unstemmed Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
title_sort estimation of spatial lag model under random missing data in the dependent variable. two stage estimator with imputation
publisher Pontificia Universidad Católica del Perú
series Economía
issn 0254-4415
2304-4306
publishDate 2021-05-01
description The main goal of this article is to propose estimators for the Spatial Lag Model (SLM) under missing data context. We present three alternatives estimators for the SLM based on Two Stage Least Squares estimation methodology. The estimators are eÿcient within their type and consistent under random missing data in the dependent variable. Unlike the IBG2SLS estimator presented in Wang and Lee (2013) which impute all missing data we only impute missing data in the spatial lag. Our first proposal is an alternative version of the IBG2SLS estimator, the second one is based on an approximation to the optimal instruments matrix and the third one is an alternative equivalent to the first. Thorough a Monte Carlo simulation we assess the estimators performance under finite samples. Results show a good performance for all estimators, moreover, results are quite similar to the IBG2SLS estimator suggesting that a complete imputation (as IBG2SLS does) does not add information.
topic Random missing data
Two stage estimators
Imputation
Spatial lag model
url http://revistas.pucp.edu.pe/index.php/economia/article/view/23710
work_keys_str_mv AT alejandroizaguirre estimationofspatiallagmodelunderrandommissingdatainthedependentvariabletwostageestimatorwithimputation
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