Adaptive Learning Rate For Neural Network Classification Model

dc.contributor.authorRujira Jullapak
dc.contributor.authorArit Thammano
dc.contributor.authorBoonprasert Surakratanasakul
dc.date.accessioned2026-05-08T19:20:06Z
dc.date.issued2022-12-21
dc.description.abstractImbalanced data cause prediction inaccuracy of the classification model. Two types of techniques have been devised to address this problem: pre-processing data before training a classification model and adjusting the classification algorithm. This study, which introduced the adaptive learning rate into a backpropagation neural network algorithm, is of the latter type. The learning rate was adjusted in each iterative learning cycle: the learning rate is increased for the data class with fewer samples and decreased for the data class with more samples. K-fold cross-validation was used to test the effectiveness of the prediction model on 10 datasets. The results showed that the proposed ZMP algorithm outperformed the original backpropagation neural network on 6 datasets; the improvement ranged from 2.24% to 20.22%. Moreover, on the other 4 datasets, even though the proposed technique provided less accurate predictions, the differences were very slight.
dc.identifier.doi10.1109/icsec56337.2022.10049365
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/17366
dc.subjectNeural Networks and Applications
dc.subjectFace and Expression Recognition
dc.subjectImbalanced Data Classification Techniques
dc.titleAdaptive Learning Rate For Neural Network Classification Model
dc.typeArticle

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