Hybrid training of deep neural networks with multiple output layers for tabular data classification
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Date
2025-07-05Metadata
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In the rapidly evolving landscape of deep learning, the ability to balance performance and computational efficiency is indispensable. Layer-wise training, which involves independently training each hidden layer of a neural network with its private output layer, offers a promising avenue by enabling the construction of a single network that can leverage an ensemble of output layers during prediction. This approach has been successfully employed in state-of-the-art models like ensemble deep multilayer perceptron (edMLP) and ensemble deep random vector functional link (edRVFL), pushing the boundaries of their base models, MLP trained by backpropagation (BP) and RVFL trained using a closed-form solution (CFS). However, edRVFL often underperforms edMLP in accuracy, while edMLP incurs significantly higher computational cost. To this end, we introduce two novel hybrid training approaches that integrate BP and CFS, aiming to balance the trade-offs. Extensive experiments on diverse classification datasets reveal that one of the proposed models, ensemble deep adaptive sampling (edAS), achieves statistically significant improvements in classification accuracy over state-of-the-art models, including edRVFL, edMLP, and self-normalizing neural network (SNN), while being less computationally expensive. Furthermore, the second proposed model, MO-MLP, demonstrates statistically significant superiority over competing models while requiring less than one-third of the computation time needed by models that incorporate BP in a layer-wise manner. The source code for all proposed models is available on GitHub.11https://github.com/M-Hamdy-M/ed-hybrids.
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