masterThesis
Classificação de padrões através de um comitê de máquinas aprimorado por aprendizagem por reforço
Fecha
2012-08-13Registro en:
LIMA, Naiyan Hari Cândido. Classificação de padrões através de um comitê de máquinas aprimorado por aprendizagem por reforço. 2012. 75 f. Dissertação (Mestrado em Automação e Sistemas; Engenharia de Computação; Telecomunicações) - Universidade Federal do Rio Grande do Norte, Natal, 2012.
Autor
Lima, Naiyan Hari Cândido
Resumen
Reinforcement learning is a machine learning technique that, although finding a large
number of applications, maybe is yet to reach its full potential. One of the inadequately tested
possibilities is the use of reinforcement learning in combination with other methods for the
solution of pattern classification problems.
It is well documented in the literature the problems that support vector machine ensembles
face in terms of generalization capacity. Algorithms such as Adaboost do not deal appropriately
with the imbalances that arise in those situations. Several alternatives have been proposed,
with varying degrees of success.
This dissertation presents a new approach to building committees of support vector machines.
The presented algorithm combines Adaboost algorithm with a layer of reinforcement
learning to adjust committee parameters in order to avoid that imbalances on the committee
components affect the generalization performance of the final hypothesis. Comparisons were
made with ensembles using and not using the reinforcement learning layer, testing benchmark
data sets widely known in area of pattern classification