Dynamic Capital Structure Adjustment: Which estimator yields consistent and efficient estimates?

Journal of Economic and Financial Sciences

 
 
Field Value
 
Title Dynamic Capital Structure Adjustment: Which estimator yields consistent and efficient estimates?
 
Creator Moyo, Vusani
 
Subject Partial adjustment; speed of adjustment; system GMM; difference GMM; instrumental variables; random effects Tobit
Description The partial adjustment model is key to a number of corporate finance research areas. The model is by its nature an autoregressive-distributed lag model that is characterised by heterogeneity among individuals and autocorrelation due to the presence of the lagged dependent variable. Finding a suitable estimator to fit the model can be challenging, as the existing estimators differ significantly in their consistency and bias. This study used data drawn from 143 non-financial firms listed on the Johannesburg Stock Exchange (JSE) to test for the consistency and efficiency of the leading partial adjustment model estimators. The study results confirm the bias-corrected least squares dummy variable (LSDVC) initialised by the system generalised method of moments (GMM) estimator, the random effects Tobit estimator and the system GMM estimator as the most suitable estimators for the partial adjustment model. The difference GMM estimator and the Anderson-Hsiao instrumental variables estimator are inconsistent and biased in the context of the partial adjustment model.
 
Publisher AOSIS
 
Contributor
Date 2016-03-10
 
Type info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion —
Format application/pdf
Identifier 10.4102/jef.v9i1.38
 
Source Journal of Economic and Financial Sciences; Vol 9, No 1 (2016); 209-227 2312-2803 1995-7076
 
Language eng
 
Relation
The following web links (URLs) may trigger a file download or direct you to an alternative webpage to gain access to a publication file format of the published article:

https://jefjournal.org.za/index.php/jef/article/view/38/35
 
Rights Copyright (c) 2017 Vusani Moyo https://creativecommons.org/licenses/by/4.0
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