A two-step supervised learning artificial neural network for imbalanced dataset problems

In this paper, a two-step supervised learning algorithm of a single layer feedforward Articial Neural Network (ANN) is proposed for solving imbalanced dataset problems. Levenberg Marquart backpropagation learning algorithm is utilized in the first step learning, while the second step learning mechan...

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Bibliographic Details
Main Authors: Adam, Asrul, Ibrahim, Zuwairie, Shapiai, Mohd. Ibrahim, Lim, Chun Chew, Lee, Wen Jau, Khalid, Marzuki, Watada, Junzo
Format: Article
Published: 2012
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Online Access:http://eprints.utm.my/46543/
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Summary:In this paper, a two-step supervised learning algorithm of a single layer feedforward Articial Neural Network (ANN) is proposed for solving imbalanced dataset problems. Levenberg Marquart backpropagation learning algorithm is utilized in the first step learning, while the second step learning mechanism is introduced by optimizing the decision threshold of the step function at the output layer of ANN using particle swarm optimization (PSO). After all the steps learning are accomplished, the best weights and decision threshold value are obtained to be used for testing process. Several imbalanced datasets, which are available in UCI Machine Learning Repository, are chosen as case study. The prediction performance is assessed by Geometric Mean (G-mean), which is a standard measure to indicate the efficiency of classier for imbalanced datasets. Based on the experimental results, the proposed method is able to provide good G-mean value compared with the conventional ANN approaches.