Title of article :
Evolutionary deep belief networks with bootstrap sampling for imbalanced class datasets
Author/Authors :
Ismail, Amelia Ritahani Department of Computer Science - Kulliyyah of Information & Communication Technology - International Islamic University Malaysia - Kuala Lumpur , Malaysia , A’inur A’fifah Amri, Department of Computer Science - Kulliyyah of Information & Communication Technology - International Islamic University Malaysia - Kuala Lumpur , Malaysia , Mohammad, Omar Abdelaziz Department of Computer Science - Kulliyyah of Information & Communication Technology - International Islamic University Malaysia - Kuala Lumpur , Malaysia
Pages :
14
From page :
123
To page :
136
Abstract :
Imbalanced class data is a common issue faced in classification tasks. Deep Belief Networks (DBN) is a promising deep learning algorithm when learning from complex feature input. However, when handling imbalanced class data, DBN encounters low performance as other machine learning algorithms. In this paper, the genetic algorithm (GA) and bootstrap sampling are incorporated into DBN to lessen the drawbacks occurs when imbalanced class datasets are used. The performance of the proposed algorithm is compared with DBN and is evaluated using performance metrics. The results showed that there is an improvement in performance when Evolutionary DBN with bootstrap sampling is used to handle imbalanced class datasets.
Keywords :
Imbalanced class , Deep belief networks , Genetic algorithm , Bootstrapping sampling , Complex feature input
Journal title :
International Journal of Advances in Intelligent Informatics
Serial Year :
2019
Full Text URL :
Record number :
2601050
Link To Document :
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