dcce - Dynamic Common Correlated Effects Estimation for Panel Data
Estimates heterogeneous coefficient models for large
panels with cross-sectional dependence. Implements the Mean
Group (MG) estimator of Pesaran and Smith (1995)
<doi:10.1016/0304-4076(94)01644-F>, the Common Correlated
Effects (CCE) and Dynamic CCE (DCCE) estimators of Pesaran
(2006) <doi:10.1111/j.1468-0262.2006.00692.x> and Chudik and
Pesaran (2015) <doi:10.1016/j.jeconom.2015.03.007>, the
regularized CCE of Juodis (2022), the Augmented Mean Group
(AMG) of Eberhardt and Teal (2010), the Interactive Fixed
Effects (IFE) estimator of Bai (2009) <doi:10.3982/ECTA6135>,
and long-run estimators including Cross-Sectionally augmented
Distributed Lag (CS-DL), Cross-Sectionally augmented
Autoregressive Distributed Lag (CS-ARDL), and Pooled Mean Group
(PMG) (Chudik et al. 2016; Shin et al. 1999). Also provides
rolling-window estimation, high-dimensional fixed effect
absorption, spatial CCE via user-supplied weight matrices, and
structural break tests (Chow and sup-Wald) following Andrews
(1993), Bai and Perron (1998), and Ditzen, Karavias and
Westerlund (2024). Supplies a comprehensive cross-sectional
dependence (CD) test suite including the Pesaran (2015) CD test
<doi:10.1080/07474938.2014.956623>, the Juodis and Reese (2022)
randomized weighted CD (CDw) test, the Baltagi et al. (2012)
bias-adjusted weighted CD (CDw+) test, the Fan et al. (2015)
Power Enhancement Approach (PEA) test, and the Pesaran and Xie
(2021) bias-corrected CD (CD*) test. Further diagnostics
include the Pesaran (2007) Cross-sectionally Augmented IPS
(CIPS) panel unit root test <doi:10.1002/jae.951>, the
Westerlund (2007) panel cointegration tests, the Dumitrescu and
Hurlin (2012) panel Granger causality test, the Im-Pesaran-Shin
(IPS) and Levin-Lin-Chu (LLC) panel unit root tests, the
Pedroni (2004) and Kao (1999) residual cointegration tests, the
Swamy (1970) and Pesaran and Yamagata (2008) slope homogeneity
tests, a Hausman-type test for MG versus pooled, the exponent
of cross-sectional dependence from Bailey et al. (2016)
<doi:10.1002/jae.2490>, information criteria for
Cross-Sectional Average (CSA) selection, the rank condition
classifier, impulse response functions, cross-section and wild
bootstrap inference, and 'broom'-compatible methods.