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Year: 2017


Type: Journal Article



Title: Generating highly accurate prediction hypotheses through collaborative ensemble learning


Author: Arsov, Nino
Author: Pavlovski, Martin
Author: Basnarkov, Lasko
Author: Kocarev, Ljupcho



Abstract: Ensemble generation is a natural and convenient way of achieving better generalization performance of learning algorithms by gathering their predictive capabilities. Here, we nurture the idea of ensemblebased learning by combining bagging and boosting for the purpose of binary classification. Since the former improves stability through variance reduction, while the latter ameliorates overfitting, the outcome of a multi-model that combines both strives toward a comprehensive net-balancing of the bias-variance trade-off. To further improve this, we alter the bagged-boosting scheme by introducing collaboration between the multi-model’s constituent learners at various levels. This novel stabilityguided classification scheme is delivered in two flavours: during or after the boosting process. Applied among a crowd of Gentle Boost ensembles, the ability of the two suggested algorithms to generalize isinspected by comparing them against Subbagging and Gentle Boost on various real-world datasets. In both cases, our models obtained a 40% generalization error decrease. But their true ability to capture details in data was revealed through their application for protein detection in texture analysis of gel electrophoresis images. They achieve improved performance of approximately 0.9773 AUROC when compared to the AUROC of 0.9574 obtained by an SVM based on recursive feature elimination.


Publisher: Nature Publishing Group


Relation: Scientific reports



Identifier: oai:repository.ukim.mk:20.500.12188/23001
Identifier: http://hdl.handle.net/20.500.12188/23001



TitleDateViews
Generating highly accurate prediction hypotheses through collaborative ensemble learning201720