Economía

Permanent URI for this communityhttp://54.81.141.168/handle/123456789/175934

e-ISSN: 2304-4306

ECONOMÍA Journal was initially established as the “Revista Economía” of the Department of Economics of the Pontificia Universidad Católica of Peru (PUCP) in 1977. It is the oldest academic journal on economics in the country. Building on that legacy, ECONOMÍA has now been relaunched as an internationally refereed journal dedicated to publishing original academic research on economics in English, with an expanded and prestigious Editorial Board, as well as a large team of Associated Editors that guarantee the highest theoretical and methodological standards.

ECONOMÍA also offers a manuscript management platform that provides an eficient workflow among authors, associate editors and referees throughout the process of manuscript submission and evaluation. In this new stage, ECONOMÍA aspires to continue leading the progress of academic literature in the country as well as position itself in a prominent place in the Latin American region.

Browse

Search Results

Now showing 1 - 2 of 2
  • Item
    Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
    (Pontificia Universidad Católica del Perú, 2021-05-06) Izaguirre, Alejandro
    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.
  • Item
    Estimation of Spatial Lag Model Under Random Missing Data in the Dependent Variable. Two Stage Estimator with Imputation
    (Pontificia Universidad Católica del Perú. Fondo Editorial, 2021-05-06) Izaguirre, Alejandro
    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.