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Approximation with Radial Bases Functions

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Abstract

The radial basis method (RBF) is one of the kernel methods, which can be employed for interpolation as well as approximation of data or functions given by values.

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Awange, J.L., Paláncz, B., Lewis, R.H., Völgyesi, L. (2018). Approximation with Radial Bases Functions. In: Mathematical Geosciences. Springer, Cham. https://doi.org/10.1007/978-3-319-67371-4_9

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