Gupta et al., 2025 - Google Patents
Impact of Too Many Neural Network Layers on OverfittingGupta et al., 2025
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- 11084675360858261728
- Author
- Gupta R
- Jindal R
- Publication year
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Deep neural networks have revolutionized artificial intelligence by enabling models to learn intricate data representations. However, when these networks become too deep, they risk overfitting—memorizing training data rather than learning patterns that generalize well to …
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