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Varying-Coefficient Panel Data Models With Nonstationarity and Partially Observed Factor Structure

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Version 2 2020-02-21, 19:48
Version 1 2020-01-23, 19:38
journal contribution
posted on 2020-02-21, 19:48 authored by Chaohua Dong, Jiti Gao, Bin Peng

In this article, we study a varying-coefficient panel data model with both nonstationarity and partially observed factor structure. Two approaches are proposed. The first approach proposed in the main text considers a sieve based method to estimate the unknown coefficients as well as the factors and loading functions simultaneously, while the second approach proposed in the online supplementary document involving the principal component analysis provides an alternative estimation method. We establish asymptotic properties for them, compare the asymptotic efficiency of the two estimation methods and examine the theoretical findings through extensive Monte Carlo simulations. In an empirical study, we use our newly proposed model and the first method to study the returns to scale of large U.S. commercial banks, where some overlooked modeling issues in the literature of production econometrics are addressed. Supplementary materials for this article are available online.

Funding

The first author also thanks the financial support from National Natural Science Foundation of China under grant no. 71671143. The second author would like to acknowledge the Australian Research Council Discovery Grants Program for its financial support under grant numbers: DP150101012 and DP170104421.

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