X-differencing and dynamic panel model estimation
This paper introduces a new estimation method for dynamic panel models with fixed effects and AR(p) idiosyncratic errors. The proposed estimator uses a novel form of systematic differencing, called X-differencing, that eliminates fixed effects and retains information and signal strength in cases whe...
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sg-smu-ink.soe_research-29702017-07-17T09:49:13Z X-differencing and dynamic panel model estimation HAN, Chirok PHILLIPS, Peter C. B. SUL, Donggyu This paper introduces a new estimation method for dynamic panel models with fixed effects and AR(p) idiosyncratic errors. The proposed estimator uses a novel form of systematic differencing, called X-differencing, that eliminates fixed effects and retains information and signal strength in cases where there is a root at or near unity. The resulting "panel fully aggregated" estimator (PFAE) is obtained by pooled least squares on the system of X-differenced equations. The method is simple to implement, consistent for all parameter values, including unit root cases, and has strong asymptotic and finite sample performance characteristics that dominate other procedures, such as bias corrected least squares, generalized method of moments (GMM), and system GMM methods. The asymptotic theory holds as long as the cross section (n) or time series (T) sample size is large, regardless of the n/T ratio, which makes the approach appealing for practical work. In the time series AR(1) case (n = 1), the FAE estimator has a limit distribution with smaller bias and variance than the maximum likelihood estimator (MLE) when the autoregressive coefficient is at or near unity and the same limit distribution as the MLE in the stationary case, so the advantages of the approach continue to hold for fixed and even small n. Some simulation results are reported, giving comparisons with other dynamic panel estimation methods. 2014-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1971 info:doi/10.1017/S0266466613000170 https://ink.library.smu.edu.sg/context/soe_research/article/2970/viewcontent/X_Diff_2014_afv.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Maximum Likelihood Estimation Unit Root Time Series Limit Theory Matrix Estimator Error Components Inference Covariance Regression Autoregression Econometrics |
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Maximum Likelihood Estimation Unit Root Time Series Limit Theory Matrix Estimator Error Components Inference Covariance Regression Autoregression Econometrics HAN, Chirok PHILLIPS, Peter C. B. SUL, Donggyu X-differencing and dynamic panel model estimation |
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This paper introduces a new estimation method for dynamic panel models with fixed effects and AR(p) idiosyncratic errors. The proposed estimator uses a novel form of systematic differencing, called X-differencing, that eliminates fixed effects and retains information and signal strength in cases where there is a root at or near unity. The resulting "panel fully aggregated" estimator (PFAE) is obtained by pooled least squares on the system of X-differenced equations. The method is simple to implement, consistent for all parameter values, including unit root cases, and has strong asymptotic and finite sample performance characteristics that dominate other procedures, such as bias corrected least squares, generalized method of moments (GMM), and system GMM methods. The asymptotic theory holds as long as the cross section (n) or time series (T) sample size is large, regardless of the n/T ratio, which makes the approach appealing for practical work. In the time series AR(1) case (n = 1), the FAE estimator has a limit distribution with smaller bias and variance than the maximum likelihood estimator (MLE) when the autoregressive coefficient is at or near unity and the same limit distribution as the MLE in the stationary case, so the advantages of the approach continue to hold for fixed and even small n. Some simulation results are reported, giving comparisons with other dynamic panel estimation methods. |
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HAN, Chirok PHILLIPS, Peter C. B. SUL, Donggyu |
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HAN, Chirok PHILLIPS, Peter C. B. SUL, Donggyu |
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HAN, Chirok |
title |
X-differencing and dynamic panel model estimation |
title_short |
X-differencing and dynamic panel model estimation |
title_full |
X-differencing and dynamic panel model estimation |
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X-differencing and dynamic panel model estimation |
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X-differencing and dynamic panel model estimation |
title_sort |
x-differencing and dynamic panel model estimation |
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Institutional Knowledge at Singapore Management University |
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2014 |
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https://ink.library.smu.edu.sg/soe_research/1971 https://ink.library.smu.edu.sg/context/soe_research/article/2970/viewcontent/X_Diff_2014_afv.pdf |
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