CVKAN: Complex-Valued Kolmogorov-Arnold Networks
About
In this work we propose CVKAN, a complex-valued Kolmogorov-Arnold Network (KAN), to join the intrinsic interpretability of KANs and the advantages of Complex-Valued Neural Networks (CVNNs). We show how to transfer a KAN and the necessary associated mechanisms into the complex domain. To confirm that CVKAN meets expectations we conduct experiments on symbolic complex-valued function fitting and physically meaningful formulae as well as on a more realistic dataset from knot theory. Our proposed CVKAN is more stable and performs on par or better than real-valued KANs while requiring less parameters and a shallower network architecture, making it more explainable.
Matthias Wolff, Florian Eilers, Xiaoyi Jiang• 2025
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Function Fitting | Holography Dataset (test) | Test MSE0.016 | 18 | |
| Complex-valued Function Fitting | square | MSE0.001 | 8 | |
| Complex-valued Function Fitting | Sin | MSE0.001 | 4 | |
| Complex-valued Function Fitting | mult | MSE0.005 | 4 |
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