Informational Content of Factor Structures in Simultaneous Binary Response Models

50 Pages Posted: 11 Jan 2021 Last revised: 6 May 2025

See all articles by Shakeeb Khan

Shakeeb Khan

Boston College

Arnaud Maurel

Duke University - Department of Economics; National Bureau of Economic Research (NBER); Institute for the Study of Labor (IZA)

Yichong Zhang

Singapore Management University

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Abstract

We study the informational content of factor structures in discrete triangular systems. Factor structures have been employed in a variety of settings in cross sectional and panel data models, and in this paper we formally quantify their identifying power in a bivariate system often employed in the treatment effects literature. Our main findings are that imposing a factor structure yields point identification of parameters of interest, such as the coefficient associated with the endogenous regressor in the outcome equation, under weaker assumptions than usually required in these models. In particular, we show that a "non-standard" exclusion restriction that requires an explanatory variable in the outcome equation to be excluded from the treatment equation is no longer necessary for identification, even in cases where all of the regressors from the outcome equation are discrete. We also establish identification of the coefficient of the endogenous regressor in models with more general factor structures, in situations where one has access to at least two continuous measurements of the common factor.

Keywords: discrete choice, factor structures, causal effects

JEL Classification: C14, C31, C35

Suggested Citation

Khan, Shakeeb and Maurel, Arnaud and Zhang, Yichong, Informational Content of Factor Structures in Simultaneous Binary Response Models. IZA Discussion Paper No. 14008, Available at SSRN: https://ssrn.com/abstract=3762878

Shakeeb Khan (Contact Author)

Boston College

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Arnaud Maurel

Duke University - Department of Economics ( email )

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National Bureau of Economic Research (NBER) ( email )

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Institute for the Study of Labor (IZA) ( email )

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Yichong Zhang

Singapore Management University ( email )

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Singapore 178901, 178899
Singapore

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