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NONLINEAR PANEL DATA MODELS WITH DISTRIBUTION-FREE CORRELATED RANDOM EFFECTS

Published online by Cambridge University Press:  25 January 2021

Yu-Chin Hsu
Affiliation:
Institute of Economics, Academia Sinica National Central University National Chengchi University
Ji-Liang Shiu*
Affiliation:
Jinan University
*
Address correspondence to Ji-Liang Shiu, Institute for Economic and Social Research, Jinan University, Guangzhou, China; e-mail: jishiu.econ@gmail.com.

Abstract

Under a Mundlak-type correlated random effect (CRE) specification, we first show that the average likelihood of a parametric nonlinear panel data model is the convolution of the conditional distribution of the model and the distribution of the unobserved heterogeneity. Hence, the distribution of the unobserved heterogeneity can be recovered by means of a Fourier transformation without imposing a distributional assumption on the CRE specification. We subsequently construct a semiparametric family of average likelihood functions of observables by combining the conditional distribution of the model and the recovered distribution of the unobserved heterogeneity, and show that the parameters in the nonlinear panel data model and in the CRE specification are identifiable. Based on the identification result, we propose a sieve maximum likelihood estimator. Compared with the conventional parametric CRE approaches, the advantage of our method is that it is not subject to misspecification on the distribution of the CRE. Furthermore, we show that the average partial effects are identifiable and extend our results to dynamic nonlinear panel data models.

Type
ARTICLES
Copyright
© Cambridge University Press 2021

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Footnotes

The authors are grateful to the co-editor, three anonymous referees, Arthur Lewbel, and Matthew Shum for valuable comments and suggestions on previous versions of the paper. The authors are indebted to the editor Peter Phillips for constructive advice and comments, which have considerably improved the presentation of the paper. The authors are solely responsible for any remaining errors. Yu-Chin Hsu gratefully acknowledges research support from the Ministry of Science and Technology of Taiwan (MOST107-2410-H-001-034-MY3) and Career Development Award of Academia Sinica, Taiwan. Ji-Liang Shiu acknowledges support from the China National Science Foundation (Project No. 72073050).

References

REFERENCES

Ai, C. & Chen, X. (2003) Efficient estimation of models with conditional moment restrictions containing unknown functions. Econometrica 71(6), 17951843.CrossRefGoogle Scholar
Aitkin, M. (1996) A general maximum likelihood analysis of overdispersion in generalized linear models. Statistics and Computing 6(3), 251262.CrossRefGoogle Scholar
Altonji, J. & Matzkin, R. (2005) Cross section and panel data estimators for nonseparable models with endogenous regressors. Econometrica 73(4), 10531102.CrossRefGoogle Scholar
Alvarez, J. & Arellano, M. (2003) The time series and cross-section asymptotics of dynamic panel data estimators. Econometrica 71(4), 11211159.CrossRefGoogle Scholar
Andersen, E. B. (1970) Asymptotic properties of conditional maximum-likelihood estimators. Journal of the Royal Statistical Society. Series B (Methodological) 28(3), 283301.CrossRefGoogle Scholar
Arellano, M. & Bonhomme, S. (2009) Robust priors in nonlinear panel data models. Econometrica 77(2), 489536.Google Scholar
Arellano, M. & Bonhomme, S. (2011) Nonlinear panel data analysis. Annual Review of Economics 3, 395424.CrossRefGoogle Scholar
Arellano, M. & Bonhomme, S. (2012) Identifying distributional characteristics in random coefficients panel data models. Review of Economic Studies 79(3), 9871020.CrossRefGoogle Scholar
Arellano, M. & Carrasco, R. (2003) Binary choice panel data models with predetermined variables. Journal of Econometrics 115(1), 125157.CrossRefGoogle Scholar
Baltagi, B. H. (2008) Econometric Analysis of Panel Data. Wiley.Google Scholar
Bester, C. A. & Hansen, C. (2009) A penalty function approach to bias reduction in nonlinear panel models with fixed effects. Journal of Business & Economic Statistics 27(2), 131148.CrossRefGoogle Scholar
Bonhomme, S. (2012) Functional differencing. Econometrica 80(4), 13371385.Google Scholar
Briesch, R. A., Chintagunta, P. K., & Matzkin, R. L. (2010) Nonparametric discrete choice models with unobserved heterogeneity. Journal of Business & Economic Statistics 28(2), 291307.CrossRefGoogle Scholar
Browning, M. & Carro, J. M. (2014) Dynamic binary outcome models with maximal heterogeneity. Journal of Econometrics 178(2), 805823.CrossRefGoogle Scholar
Chamberlain, G. (1980) Analysis of covariance with qualitative data. Review of Economic Studies 47(1), 225238.CrossRefGoogle Scholar
Chamberlain, G. (2010) Binary response models for panel data: Identification and information. Econometrica 78(1), 159168.Google Scholar
Chen, S., Si, J., Zhang, H., & Zhou, Y. (2017) Root-N consistent estimation of a panel data binary response model with unknown correlated random effects. Journal of Business & Economic Statistics 35(4), 559571.CrossRefGoogle Scholar
Chen, X., Liao, Z., & Sun, Y. (2014) Sieve inference on possibly misspecified semi-nonparametric time series models. Journal of Econometrics 178(1), 639658.CrossRefGoogle Scholar
Chen, X. & Shen, X. (1998) Sieve extremum estimates for weakly dependent data. Econometrica 66(2), 289314.CrossRefGoogle Scholar
Chernozhukov, V., Fernández-Val, I., Hahn, J., & Newey, W. (2013) Average and quantile effects in nonseparable panel models. Econometrica 81(2), 535580.Google Scholar
Chernozhukov, V., Fernandez-Val, I., Hoderlein, S., Holzmann, S., & Newey, W. (2015) Nonparametric identification in panels using quantiles. Journal of Econometrics 188(2), 378392.CrossRefGoogle Scholar
Evdokimov, K. (2011) Identification and Estimation of a Nonparametric Panel Data Model with Unobserved Heterogeneity. Working paper.Google Scholar
Folland, G. B. (2009) Fourier Analysis and its Applications, vol. 4. American Mathematical Society.Google Scholar
Gayle, G.-L. & Viauroux, C. (2007) Root-N consistent semiparametric estimators of a dynamic panel-sample-selection model. Journal of Econometrics 141(1), 179212.CrossRefGoogle Scholar
Gayle, W.-R. (2013) Identification and $\sqrt{N}$ -consistent estimation of a nonlinear panel data model with correlated unobserved effects. Journal of Econometrics 175(2), 7183.CrossRefGoogle Scholar
Gayle, W.-R. & Namoro, S. D. (2013) Estimation of a nonlinear panel data model with semiparametric individual effects. Journal of Econometrics 175(1), 4659.CrossRefGoogle Scholar
Graham, B. & Powell, J. (2012) Identification and estimation of average partial effects in “irregular” correlated random coefficient panel data models. Econometrica 80(5), 21052152.Google Scholar
Hahn, J., Liao, Z., & Ridder, G. (2018) Nonparametric two-step sieve M estimation and inference. Econometric Theory 34(6), 12811324.CrossRefGoogle Scholar
Heckman, J. & Singer, B. (1984) The identifiability of the proportional hazard model. The Review of Economic Studies 51(2), 231241.CrossRefGoogle Scholar
Hoderlein, S. & Mammen, E. (2007) Identification of marginal effects in nonseparable models without monotonicity. Econometrica 75(5), 15131518.CrossRefGoogle Scholar
Hoderlein, S. & White, H. (2012) Nonparametric identification in nonseparable panel data models with generalized fixed effects. Journal of Econometrics 168(2), 300314.CrossRefGoogle Scholar
Honoré, B. & Kyriazidou, E. (2000) Panel data discrete choice models with lagged dependent variables. Econometrica 68(4), 839874.CrossRefGoogle Scholar
Honoré, B. & Tamer, E. (2006) Bounds on parameters in panel dynamic discrete choice models. Econometrica 74(3), 611629.CrossRefGoogle Scholar
Honoré, B. E. & Lewbel, A. (2002) Semiparametric binary choice panel data models without strictly exogeneous regressors. Econometrica 70(5), 20532063.CrossRefGoogle Scholar
Hsiao, C. (2015) Analysis of Panel Data. Cambridge University Press.Google Scholar
Hu, Y. & Ridder, G. (2010) On deconvolution as a first stage nonparametric estimator. Econometric Reviews 29(4), 365396.CrossRefGoogle Scholar
Hu, Y. & Ridder, G. (2012) Estimation of nonlinear models with mismeasured regressors using marginal information. Journal of Applied Econometrics 27(3), 347385.CrossRefGoogle Scholar
Hu, Y. & Shum, M. (2012) Nonparametric identification of dynamic models with unobserved state variables. Journal of Econometrics 171(1), 3244.CrossRefGoogle Scholar
Kiefer, J. & Wolfowitz, J. (1956) Consistency of the maximum likelihood estimator in the presence of infinitely many incidental parameters. The Annals of Mathematical Statistics 27(4), 887906.CrossRefGoogle Scholar
Laird, N. (1978) Nonparametric maximum likelihood estimation of a mixing distribution. Journal of the American Statistical Association 73(364), 805811.CrossRefGoogle Scholar
Lindsay, B. G. & Lesperance, M. L. (1995) A review of semiparametric mixture models. Journal of Statistical Planning and Inference 47(1–2), 2939.CrossRefGoogle Scholar
Matzkin, R. (2003) Nonparametric estimation of nonadditive random functions. Econometrica 71(5), 13391375.CrossRefGoogle Scholar
Rasch, G. (1993) Probabilistic Models for Some Intelligence and Attainment Tests. ERIC.Google Scholar
Schennach, S. (2007) Instrumental variable estimation of nonlinear errors-in-variables models. Econometrica 75(1), 201239.CrossRefGoogle Scholar
Schennach, S. M. (2004) Estimation of nonlinear models with measurement error. Econometrica 72(1), 3375.CrossRefGoogle Scholar
Shen, X. (1997) On methods of sieves and penalization. Annals of Statistics 25(6), 25552591.CrossRefGoogle Scholar
Shiu, J. & Hu, Y. (2013) Identification and estimation of nonlinear dynamic panel data models with unobserved covariates. Journal of Econometrics 175(2), 116131.CrossRefGoogle Scholar
Torchinsky, A. (2012) Real-Variable Methods in Harmonic Analysis. Courier Corporation.Google Scholar
Wooldridge, J. (2005) Simple solutions to the initial conditions problem in dynamic, nonlinear panel data models with unobserved heterogeneity. Journal of Applied Econometrics 20(1), 3954.CrossRefGoogle Scholar
Wooldridge, J. (2010) Econometric Analysis of Cross Section and Panel Data. The MIT Press.Google Scholar
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