Abstract
In this work, we propose a general framework for designing neural network architectures inspired by dynamic differential equations, utilizing the operator-splitting technique. The central idea is to treat neural network design as a discretizations of a continuous-time optimal control problem, where the underlying dynamics are governed by differential equations serving as constraints which is then unrolled as our network. These dynamics are discretized through operator-splitting schemes, which allow complex evolution equations to be decomposed into simpler substeps. Each step in the splitting scheme is then unrolled and interpreted as a layer in a neural network, with certain control variables modeled as learnable parameters. This formulation provides a principled way to incorporate prior knowledge about dynamics and structure into the network design. Using our theory, we give a rigorous mathematical explanation of the well-known UNet and show that it is a discretizations of a simple differential equation. By adding regularization to UNet, we can derive the PottsMGNet also through our proposed framework.
| Original language | English |
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| Title of host publication | Proceedings of the Symposium of the Norwegian AI Society, NAIS 2025 |
| Editors | Robert Jenssen, Kerstin Bach |
| Publisher | CEUR-WS |
| Number of pages | 12 |
| Publication status | Published - 13 Jun 2025 |
| Event | 6th Symposium of the Norwegian AI Society, NAIS 2025 - Tromso, Norway Duration: 17 Jun 2025 → 18 Jun 2025 https://ceur-ws.org/Vol-3975/ (Conference proceedings) |
Publication series
| Name | CEUR Workshop Proceedings |
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| Publisher | CEUR-WS |
| Volume | 3975 |
| ISSN (Print) | 1613-0073 |
Conference
| Conference | 6th Symposium of the Norwegian AI Society, NAIS 2025 |
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| Country/Territory | Norway |
| City | Tromso |
| Period | 17/06/25 → 18/06/25 |
| Internet address |
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User-Defined Keywords
- control problem
- deep neural network
- image segmentation
- operator splitting
- UNet