Solving endogeneity without instruments. An application from Lewbel

Authors

Keywords:

Endogeneity, econometrics, comparative analysis, instrumental variables, JEL: C13, C26, C36

Abstract

To this day, there has been an important academic motivation for understanding causal relationships to make robust statistical inference. However, it is very common to face endogeneity problems and in practice finding instruments is usually complex. Although endogeneity may be due to different interaction mechanisms and relationships between the regressors and the error response variables, the effect it causes is the inconsistency in the estimation, which means that the results are not responding adequately to solving the problem. proposed. Hence, the motivation for research and methodologies that seek to correct endogeneity without resorting to the use of external instruments. In this working paper, we start by considering that the inconsistency is due to a measurement error in the endogenous variable, and solution mechanisms are explored to correct the bias. Given the nature of the data, the chosen methodology is that proposed by Lewbel (1997). Finally, an application is made to an empirical exercise using the databases provided by Stock and Watson (2007), concluding with the solution to endogeneity problems and the difference between the solution found in the research and other econometric studies.

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Author Biographies

  • Uvenny Quirama Estrada, Corporación Universitaria Americana

    Magister en Administración, Corporación Universitaria Americana, Docente/ Business Intelligence   /Ciencias Económicas y Administrativas, Medellín, Colombia.

  • Paula Andrea Forero Delgadillo, Universidad EAFIT

    Economista y Estudiante de la Maestría en Economía, Universidad EAFIT, Asistente de investigación/Escuela de economía y finanzas, Medellín, Colombia.

  • Diego Fernando Montañez Herrera, Universidad EAFIT

    Economista, Universidad EAFIT, Integrante/ Grupo de Estudios en Economía y Empresa/Escuela de Economía y Finanzas, Medellín, Colombia.

  • Diana Marcela Mena Serna, Universidad EAFIT

    Economista, Universidad Antioquia, Asistente de Investigación Centro de Investigaciones Económicas y Financieras / Escuela de Economía y Finanzas, Medellín, Colombia.

  • Henner Andrés Solarte, Universidad EAFIT

    Economista, Universidad EAFIT, Asistente de Investigación/Escuela de Administración, Medellín, Colombia.

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Published

2020-07-15

Issue

Section

Review article

How to Cite

Solving endogeneity without instruments. An application from Lewbel . (2020). Unaciencia, Revista De Estudios E Investigaciones, 13(24), 71-83. https://revistas.unac.edu.co/index.php/unaciencia/article/view/232