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Likelihood-based inference for dynamic panel data models

Seung C. Ahn () and Gareth M. Thomas ()
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Seung C. Ahn: Arizona State University
Gareth M. Thomas: S&P Global

A chapter in Advances in Applied Econometrics, 2024, pp 397-454 from Springer

Abstract: Abstract This paper considers maximum likelihood (ML)-based inferences for dynamic panel data models. We focus on the analysis of the panel data with a large number (N) of cross-sectional units and a small number (T) of repeated time series observations for each cross-sectional unit. We examine several different ML estimators and their asymptotic and finite-sample properties. Our major finding is that when data follow unit-root processes without or with drifts, the ML estimators have singular information matrices. This is a case of Sargan (Econometrica 51:1605–1634, 1983) in which the first-order condition for identification fails, but parameters are identified. The ML estimators are consistent, but they have non-standard asymptotic distributions, and their convergence rates are lower than N1/2. In addition, the sizes of usual Wald statistics based on the estimators are distorted even asymptotically, and they reject the unit-root hypothesis too often. However, following Rotnitzky et al. (Bernoulli 6:243–284, 2000) we show that likelihood ratio (LR) tests for unit root follow mixtures of chi-square distributions. Our Monte Carlo experiments show that the LR tests with the p-values from the mixed distributions are much better sized than the Wald tests, although they tend to slightly over-reject the unit-root hypothesis in small samples. It is also shown that the LR tests for unit roots have good finite-sample power properties.

Keywords: Dynamic panel data; Maximum likelihood; Singular information matrix (search for similar items in EconPapers)
JEL-codes: C23 C40 (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1007/978-3-031-48385-1_16

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