Parameter estimation of nonlinear econometric models using particle swarm optimization
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Wachowiak, Mark P.
Smolíková-Wachowiak, Renáta
Smolík, Dušan
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Vysoká škola báňská - Technická univerzita Ostrava
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Abstract
Global optimization is an essential component of econometric modeling. Optimization in econometrics is often
difficult due to irregular cost functions characterized by multiple local optima. The goal of this paper is to apply
a relatively new stochastic global technique, particle swarm optimization, to the well-known but difficult disequilibrium
problem. Because of its co-operative nature and balance of local and global search, particle swarm is
successful in optimizing the disequilibrium maximum likelihood function, providing better values than those
reported in the literature obtained using other stochastic techniques. These encouraging results suggest that
particle swarm optimization may be successfully applied to difficult econometrics problems, possibly in conjunction
with existing methods.
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Ekonomická revue. 2010, roč. 13, č. 4, s. 193-199 : il.