Evolutionary Undersampling for Extremely Imbalanced Big Data Classification under Apache Spark
Metadatos
Mostrar el registro completo del ítemAutor
Triguero, Isaac; Galar, Mikel; Merino, D.; Maillo Hidalgo, Jesús; Bustince, Humberto; Herrera Triguero, FranciscoEditorial
IEEE
Fecha
2016Referencia bibliográfica
Published version: I. Triguero, M. Galar, D. Merino, J. Maillo, H. Bustince and F. Herrera, "Evolutionary undersampling for extremely imbalanced big data classification under apache spark," 2016 IEEE Congress on Evolutionary Computation (CEC), Vancouver, BC, 2016, pp. 640-647, [doi: 10.1109/CEC.2016.7743853.]
Patrocinador
TIN2011-28488; TIN2013-40765-P; P10-TIC-6858; P11-TIC-7765Resumen
The classification of datasets with a skewed class distribution is an important problem in data mining. Evolutionary undersampling of the majority class has proved to be a successful approach to tackle this issue. Such a challenging task may become even more difficult when the number of the majority class examples is very big. In this scenario, the use of the evolutionary model becomes unpractical due to the memory and time constrictions. Divide-and-conquer approaches based on the MapReduce paradigm have already been proposed to handle this type of problems by dividing data into multiple subsets. However, in extremely imbalanced cases, these models may suffer from a lack of density from the minority class in the subsets considered. Aiming at addressing this problem, in this contribution we provide a new big data scheme based on the new emerging technology Apache Spark to tackle highly imbalanced datasets. We take advantage of its in-memory operations to diminish the effect of the small sample size. The key point of this proposal lies in the independent management of majority and minority class examples, allowing us to keep a higher number of minority class examples in each subset. In our experiments, we analyze the proposed model with several data sets with up to 17 million instances. The results show the goodness of this evolutionary undersampling model for extremely imbalanced big data classification.