Title of article
Modified balanced random forest for improving imbalanced data prediction
Author/Authors
Agusta , Zahra Putri Human Computer Interaction Department - Surya University - Tangerang, Indonesia , Adiwijaya , chool of Computing - Telkom University - Bandung, Indonesia
Pages
8
From page
58
To page
65
Abstract
This paper proposes a Modified Balanced Random Forest (MBRF) algorithm as a classification technique to address imbalanced data. The MBRF process changes the process in a Balanced Random Forest by applying an under-sampling strategy based on clustering techniques for each data bootstrap decision tree in the Random Forest algorithm. To find the optimal performance of our proposed method compared with four clustering techniques, like: K-MEANS, Spectral Clustering, Agglomerative Clustering, and Ward Hierarchical Clustering. The experimental result show the Ward Hierarchical Clustering Technique achieved optimal performance, also the proposed MBRF method yielded better performance compared to the Balanced Random Forest (BRF) and Random Forest (RF) algorithms, with a sensitivity value or true positive rate (TPR) of 93.42%, a specificity or true negative rate (TNR) of 93.60%, and the best AUC accuracy value of 93.51%. Moreover, MBRF also reduced process running time.
Keywords
Classification technique , Customer churn , Balanced random forest , Random forest algorithm , Imbalanced data
Journal title
International Journal of Advances in Intelligent Informatics
Serial Year
2019
Record number
2601094
Link To Document