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Sinc Kolmogorov-Arnold network and its application for solving PDEs with singularities

About

In this paper, we propose to use Sinc interpolation in the context of Kolmogorov-Arnold Networks, neural networks with learnable activation functions, which recently gained attention as alternatives to Multilayer Perceptron. Many different function representations have already been tried, but we show that Sinc interpolation proposes a viable alternative, since it is known in numerical analysis to effectively represent both smooth functions and functions with singularities. This is important not only for function approximation but also for solving the partial differential equations with physics-informed neural networks. Through a series of experiments, we show that SincKANs provide better results in almost all of the examples we have considered.

Tianchi Yu, Jingwei Qiu, Jiang Yang, Ivan Oseledets• 2024

Related benchmarks

TaskDatasetResultRank
Function Approximationsin high
RMSE0.0394
10
Function Approximationmulti-sqrt
RMSE2.14e-4
10
Function Approximationsin low
RMSE3.55e-4
5
Function ApproximationBL
RMSE4.76e-5
5
Function Approximationdouble exponential
RMSE7.06e-5
5
Function Approximationpiece-wise
RMSE0.0021
5
Function Approximationspectral-bias
RMSE0.0015
5
Function Approximationsin-low fine grids
RMSE4.46e-4
5
Function Approximationbl fine grids
RMSE2.28e-4
5
Function Approximationdouble exponential fine grids
RMSE7.06e-5
5
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