Imbalanced Data Parameter Optimization of Convolutional Neural Networks Based on Analysis of Variance
Ruiao Zou,
Nan Wang
Abstract:Classifying imbalanced data is important due to the significant practical value of accurately categorizing minority class samples, garnering considerable interest in many scientific domains. This study primarily uses analysis of variance (ANOVA) to investigate the main and interaction effects of different parameters on imbalanced data, aiming to optimize convolutional neural network (CNN) parameters to improve minority class sample recognition. The CIFAR-10 and Fashion-MNIST datasets are used to extract sample… Show more
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