FUSION OF BAGGING BASED ENSEMBLE FRAMEWORK FOR EPILEPTIC SEIZURE CLASSIFICATION

F Alzami, AJ Tamamy, RA Pramunendar… - Transmisi: Jurnal Ilmiah … - ejournal.undip.ac.id
Transmisi: Jurnal Ilmiah Teknik Elektroejournal.undip.ac.id
The ensemble learning approach, especially in classification, has been widely carried out
and is successful in many scopes, but unfortunately not many ensemble approaches are
used for the detection and classification of epilepsy in biomedical terms. Compared to using
a simple bagging ensemble framework, we propose a fusion bagging-based ensemble
framework (FBEF) that uses 3 weak learners in each oracle, using fusion rules, a weak
learner will give results as predictors of the oracle. All oracle predictors will be included in …
The ensemble learning approach, especially in classification, has been widely carried out and is successful in many scopes, but unfortunately not many ensemble approaches are used for the detection and classification of epilepsy in biomedical terms. Compared to using a simple bagging ensemble framework, we propose a fusion bagging-based ensemble framework (FBEF) that uses 3 weak learners in each oracle, using fusion rules, a weak learner will give results as predictors of the oracle. All oracle predictors will be included in the trust factor to get a better prediction and classification. Compared to traditional Ensemble bagging and single learner type Ensemble bagging, our framework outperforms similar research in relation to the epileptic seizure classification as 98.11±0.68 and several real-world datasets
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