Journal article
Authors list: Savin, I; Winker, P
Publication year: 2012
Pages: 337-363
Journal: Computational Economics
Volume number: 39
Issue number: 4
ISSN: 0927-7099
eISSN: 1572-9974
DOI Link: https://doi.org/10.1007/s10614-010-9243-x
Publisher: Springer
Abstract:
Innovations, be they radical new products or technology improvements, are widely recognized as a key factor of economic growth. To identify the factors triggering innovative activities is a main concern for economic theory and empirical analysis. As the number of hypotheses is large, the process of model selection becomes a crucial part of the empirical implementation. The problem is complicated by unobserved heterogeneity and possible endogeneity of regressors. A new efficient solution to this problem is suggested, applying optimization heuristics, which exploits the inherent discrete nature of the model selection problem. The method is applied to Russian regional data within the framework of a log-linear dynamic panel data model. To illustrate the performance of the method, we also report the results of Monte-Carlo simulations.
Citation Styles
Harvard Citation style: Savin, I. and Winker, P. (2012) Heuristic Optimization Methods for Dynamic Panel Data Model Selection: Application on the Russian Innovative Performance, Computational Economics, 39(4), pp. 337-363. https://doi.org/10.1007/s10614-010-9243-x
APA Citation style: Savin, I., & Winker, P. (2012). Heuristic Optimization Methods for Dynamic Panel Data Model Selection: Application on the Russian Innovative Performance. Computational Economics. 39(4), 337-363. https://doi.org/10.1007/s10614-010-9243-x
Keywords
Model Selection