Smart Data Driven Decision Trees Ensemble Methodology for Imbalanced Big Data
Metadatos
Afficher la notice complèteEditorial
García Gil, D. et. al. Cogn Comput 16, 1572–1588 (2024). [https://doi.org/10.1007/s12559-024-10295-z]
Materia
Big data Smart data Classification
Date
2024-05-31Patrocinador
Open access publishing: Universidad de Granada/ CBUA; Spanish National Research Project PID2020-119478GB-I00; Swedish Research Council (project number: 2016-05431)Résumé
Differences in data size per class, also known as imbalanced data distribution, have become a common problem affecting data
quality.Big Data scenarios pose a newchallenge to traditional imbalanced classification algorithms, since they are not prepared
to work with such amount of data. Split data strategies and lack of data in the minority class due to the use of MapReduce
paradigm have posed new challenges for tackling the imbalance between classes in Big Data scenarios. Ensembles have been
shown to be able to successfully address imbalanced data problems. Smart Data refers to data of enough quality to achieve
high-performance models. The combination of ensembles and Smart Data, achieved through Big Data preprocessing, should
be a great synergy. In this paper, we propose a novel Smart Data driven Decision Trees Ensemble methodology for addressing
the imbalanced classification problem in Big Data domains, namely SD_DeTE methodology. This methodology is based on
the learning of different decision trees using distributed quality data for the ensemble process. This quality data is achieved
by fusing random discretization, principal components analysis, and clustering-based random oversampling for obtaining
different Smart Data versions of the original data. Experiments carried out in 21 binary adapted datasets have shown that our
methodology outperforms random forest.