Un framework di soluzione ad alto livello per problemi di classificazione basato su approcci metaeuristici
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Creato da
Candelieri, Antonio
Grandinetti, Lucio
Conforti, Domenico
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Dottorato di Ricerca in Ricerca Operativa Ciclo XXII, a.a. 2009; This work deals with the development and implementation of a high-level classification
framework which combines parameters optimization of a single classifier with classifiers
ensemble optimization, through meta-heuristics. Support Vector Machines (SVM) is used
for learning while the meta-heuristics adopted and compared are Genetic-Algorithms
(GA), Tabu-Search (TS) and Ant Colony Optimization (ACO). Single SVM optimization
usually concerns two approaches: searching for optimal parameter values of a
SVM with a fixed kernel (Model Selection) or with a linear combination of basic kernels
(Multiple Kernel Learning), both approaches have been taken into account. Adopting
meta-heuristics avoids to perform time consuming grid-approach for testing several classifier
configurations. In particular, starting from canonical formulation of GA, this study
proposes some changes in order to take into account specificities of classification learning.
Proposed solution has been extensively tested on 8 classification datasets (5 of them are
of public domain) providing reliable solutions and showing to be effective. In details,
unifying Model Selection, Multiple Kernel Learning and Ensemble Learning on a single
framework proved to be a comprehensive and reliable approach, and showing that best
solutions have been identified by one of the strategies depending on decision problem
and/or available data. Under this respect, the proposed framework may represent a new
effective and efficient high-level SVM classification learning strategy.; Università della CalabriaSoggetto
Ricerca operativa; Reti <Modelli>; Algoritmi
Relazione
MAT/09;