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| Title: | Exploring the Complexity of Deep Neural Networks through Functional Equivalence | Authors: | Shen, G | Issue Date: | 2024 | Source: | Proceedings of ICML 2024, v. 235, https://proceedings.mlr.press/v235/ | Abstract: | We investigate the complexity of deep neural networks through the lens of functional equivalence, which posits that different parameterizations can yield the same network function. Leveraging the equivalence property, we present a novel bound on the covering number for deep neural networks, which reveals that the complexity of neural networks can be reduced. Additionally, we demonstrate that functional equivalence benefits optimization, as overparameterized networks tend to be easier to train since increasing network width leads to a diminishing volume of the effective parameter space. These findings can offer valuable insights into the phenomenon of overparameterization and have implications for understanding generalization and optimization in deep learning. | Publisher: | MLResearchPress | ISSN: | 2640-3498 | Description: | 41st International Conference on Machine Learning (ICML 2024), Vienna, Austria, July 21st - 27th 2024 | Rights: | Copyright 2024 by the author(s) Posted with permission of the author. The following publication Shen, G. (2024). Exploring the Complexity of Deep Neural Networks through Functional Equivalence Proceedings of the 41st International Conference on Machine Learning, Proceedings of Machine Learning Research is available at https://proceedings.mlr.press/v235/shen24a.html. |
| Appears in Collections: | Conference Paper |
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