1. Nonlinear factor models for network and panel data
- Author
-
Martin Weidner, Mingli Chen, and Ivan Fernandez-Val
- Subjects
FOS: Computer and information sciences ,Economics and Econometrics ,Computer science ,TK ,Logit ,interactive fixed effects ,Econometrics (econ.EM) ,Ordered probit ,Probit ,Latent variable ,Poisson distribution ,network data ,Methodology (stat.ME) ,FOS: Economics and business ,symbols.namesake ,0502 economics and business ,Econometrics ,ddc:330 ,C13 ,050207 economics ,Statistics - Methodology ,Economics - Econometrics ,050205 econometrics ,Factor analysis ,QB ,Panel data ,T1 ,Applied Mathematics ,05 social sciences ,Fixed effects model ,bias correction ,gravity equation ,factor models ,incidental parameter problem ,symbols ,62E20, 62P20, 91B82 ,C23 - Abstract
Factor structures or interactive effects are convenient devices to incorporate latent variables in panel data models. We consider fixed effect estimation of nonlinear panel single-index models with factor structures in the unobservables, which include logit, probit, ordered probit and Poisson specifications. We establish that fixed effect estimators of model parameters and average partial effects have normal distributions when the two dimensions of the panel grow large, but might suffer of incidental parameter bias. We show how models with factor structures can also be applied to capture important features of network data such as reciprocity, degree heterogeneity, homophily in latent variables and clustering. We illustrate this applicability with an empirical example to the estimation of a gravity equation of international trade between countries using a Poisson model with multiple factors., Comment: 49 pages, 6 tables, the changes in v4 include numerical results with more simulations and minor edits in the main text and appendix
- Full Text
- View/download PDF