CIFASIS   20631
CENTRO INTERNACIONAL FRANCO ARGENTINO DE CIENCIAS DE LA INFORMACION Y DE SISTEMAS
Unidad Ejecutora - UE
congresos y reuniones científicas
Título:
Coupling REPMAC with FDA to solve highly imbalanced classification problems
Autor/es:
AHUMADA, HERNÁN. GRINBLAT, GUILLERMO. UZAL, LUCAS. GRANITTO, PABLO. CECCATTO, ALEJANDRO
Lugar:
Chilecito, La Rioja, Argentina
Reunión:
Workshop; XIV Congreso Argentino de la Ciencia de la Computación - IX Workshop de agentes y sistemas inteligentes; 2008
Institución organizadora:
Universidad Nacional de Chilecito
Resumen:
In many critical real world classification problems one of the classes has much less samples than the others (class imbalance). In a previous work we introduced the REPMAC algorithm to solve imbalanced problems. Using a clustering method, REPMAC recursively splits the majority class in several subsets, creating a decision tree, until the resulting sub-problems are balanced or easy to solve. In this work we evaluate the use of three different classifiers coupled with REPMAC. We compare the performance of those methods using 7 datasets from the UCI repository spanning a wide range of number of features and imbalance degree. We find that the good performance of REPMAC is almost independent of the classifier coupled to it, which suggest that it success is mostly related to the use of an appropriate strategy to cope with imbalanced problems.