Dynamics-inspired Neuromorphic Visual Representation Learning

Zhengqi Pei, Shuhui Wang
Proceedings of the 40th International Conference on Machine Learning, PMLR 202:27521-27541, 2023.

Abstract

This paper investigates the dynamics-inspired neuromorphic architecture for visual representation learning following Hamilton’s principle. Our method converts weight-based neural structure to its dynamics-based form that consists of finite sub-models, whose mutual relations measured by computing path integrals amongst their dynamical states are equivalent to the typical neural weights. Based on the entropy reduction process derived from the Euler-Lagrange equations, the feedback signals interpreted as stress forces amongst sub-models push them to move. We first train a dynamics-based neural model from scratch and observe that this model outperforms traditional neural models on MNIST. We then convert several pre-trained neural structures into dynamics-based forms, followed by fine-tuning via entropy reduction to obtain the stabilized dynamical states. We observe consistent improvements in these transformed models over their weight-based counterparts on ImageNet and WebVision in terms of computational complexity, parameter size, testing accuracy, and robustness. Besides, we show the correlation between model performance and structural entropy, providing deeper insight into weight-free neuromorphic learning.

Cite this Paper


BibTeX
@InProceedings{pmlr-v202-pei23b, title = {Dynamics-inspired Neuromorphic Visual Representation Learning}, author = {Pei, Zhengqi and Wang, Shuhui}, booktitle = {Proceedings of the 40th International Conference on Machine Learning}, pages = {27521--27541}, year = {2023}, editor = {Krause, Andreas and Brunskill, Emma and Cho, Kyunghyun and Engelhardt, Barbara and Sabato, Sivan and Scarlett, Jonathan}, volume = {202}, series = {Proceedings of Machine Learning Research}, month = {23--29 Jul}, publisher = {PMLR}, pdf = {https://proceedings.mlr.press/v202/pei23b/pei23b.pdf}, url = {https://proceedings.mlr.press/v202/pei23b.html}, abstract = {This paper investigates the dynamics-inspired neuromorphic architecture for visual representation learning following Hamilton’s principle. Our method converts weight-based neural structure to its dynamics-based form that consists of finite sub-models, whose mutual relations measured by computing path integrals amongst their dynamical states are equivalent to the typical neural weights. Based on the entropy reduction process derived from the Euler-Lagrange equations, the feedback signals interpreted as stress forces amongst sub-models push them to move. We first train a dynamics-based neural model from scratch and observe that this model outperforms traditional neural models on MNIST. We then convert several pre-trained neural structures into dynamics-based forms, followed by fine-tuning via entropy reduction to obtain the stabilized dynamical states. We observe consistent improvements in these transformed models over their weight-based counterparts on ImageNet and WebVision in terms of computational complexity, parameter size, testing accuracy, and robustness. Besides, we show the correlation between model performance and structural entropy, providing deeper insight into weight-free neuromorphic learning.} }
Endnote
%0 Conference Paper %T Dynamics-inspired Neuromorphic Visual Representation Learning %A Zhengqi Pei %A Shuhui Wang %B Proceedings of the 40th International Conference on Machine Learning %C Proceedings of Machine Learning Research %D 2023 %E Andreas Krause %E Emma Brunskill %E Kyunghyun Cho %E Barbara Engelhardt %E Sivan Sabato %E Jonathan Scarlett %F pmlr-v202-pei23b %I PMLR %P 27521--27541 %U https://proceedings.mlr.press/v202/pei23b.html %V 202 %X This paper investigates the dynamics-inspired neuromorphic architecture for visual representation learning following Hamilton’s principle. Our method converts weight-based neural structure to its dynamics-based form that consists of finite sub-models, whose mutual relations measured by computing path integrals amongst their dynamical states are equivalent to the typical neural weights. Based on the entropy reduction process derived from the Euler-Lagrange equations, the feedback signals interpreted as stress forces amongst sub-models push them to move. We first train a dynamics-based neural model from scratch and observe that this model outperforms traditional neural models on MNIST. We then convert several pre-trained neural structures into dynamics-based forms, followed by fine-tuning via entropy reduction to obtain the stabilized dynamical states. We observe consistent improvements in these transformed models over their weight-based counterparts on ImageNet and WebVision in terms of computational complexity, parameter size, testing accuracy, and robustness. Besides, we show the correlation between model performance and structural entropy, providing deeper insight into weight-free neuromorphic learning.
APA
Pei, Z. & Wang, S.. (2023). Dynamics-inspired Neuromorphic Visual Representation Learning. Proceedings of the 40th International Conference on Machine Learning, in Proceedings of Machine Learning Research 202:27521-27541 Available from https://proceedings.mlr.press/v202/pei23b.html.

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