Publication Date:
2013
abstract:
In a large number of experimental problems the high dimensionality of the search space and economical constraints can severely limit the number of experiment points that can be tested. Under this constraints, optimization techniques perform poorly in particular when little a priori knowledge is available. In this work we investigate the possibility of combining approaches from advanced statistics and optimization algorithms to effectively explore a combinatorial search space sampling a limited number of experimental points. To this purpose we propose the Naïve Bayes Ant Colony Optimization (NACO) procedure. We tested its performance in a simulation study. © 2013 Springer-Verlag.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Ant colony algorithm; combinatorial cptimization; naïve Bayes classifier
List of contributors:
Borrotti, Matteo
Book title:
Synergies of Soft Computing and Statistics for Intelligent Data Analysis
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