A new method to compute stable kernel-based interpolants has been presented by the second and third authors. This rescaled interpolation method combines the standard kernel interpolation with a properly defined rescaling operation, which smooths the oscillations of the interpolant. Although promising, this procedure lacks a systematic theoretical investigation. Through our analysis, this novel method can be understood as standard kernel interpolation by means of a properly rescaled kernel. This point of view allow us to consider its error and stability properties. First, we prove that the method is an instance of the Shepard\u2019s method, when certain weight functions are used. In particular, the method can reproduce constant functions. Se...
AbstractWe investigate convergence in a weighted L∞-norm of Hermite-Fejér and Hermite interpolation ...
It is often observed that interpolation based on translates of radial basis functions or non-radial ...
AbstractBased on Peano kernel technique, explicit error bounds (optimal for the highest order deriva...
A new method to compute stable kernel-based interpolants has been presented by the second and third ...
We consider the numerical solution of nonlinear elliptic boundary value problems with Kansa's method...
We consider the numerical solution of nonlinear elliptic boundary value problems with Kansa's method...
In this work, the interpolation methods, Polynomial interpolation, Cubic Splines interpolation, Akim...
Barycentric interpolation is a variant of Lagrange polynomial interpolation that is fast and stable....
The rescaled localized RBF method was introduced in Deparis, Forti, and Quarteroni (2014) for scatte...
International audienceWe endow P.L. Lions domain decomposition method with a Additive Schwarz Method...
AbstractRadial basis function (RBF) interpolation is a “meshless” strategy with great promise for ad...
The barycentric interpolation formula defines a stable algorithm for evaluation at points in [−1, 1]...
AbstractSome quantitative estimates concerning multi-dimensional rotundity, weak noncompactness, and...
AbstractThe Beppo–Levi native spaces which arise when using polyharmonic splines to interpolate in m...
International audienceWe endow P.L. Lions domain decomposition method with a Additive Schwarz Method...
AbstractWe investigate convergence in a weighted L∞-norm of Hermite-Fejér and Hermite interpolation ...
It is often observed that interpolation based on translates of radial basis functions or non-radial ...
AbstractBased on Peano kernel technique, explicit error bounds (optimal for the highest order deriva...
A new method to compute stable kernel-based interpolants has been presented by the second and third ...
We consider the numerical solution of nonlinear elliptic boundary value problems with Kansa's method...
We consider the numerical solution of nonlinear elliptic boundary value problems with Kansa's method...
In this work, the interpolation methods, Polynomial interpolation, Cubic Splines interpolation, Akim...
Barycentric interpolation is a variant of Lagrange polynomial interpolation that is fast and stable....
The rescaled localized RBF method was introduced in Deparis, Forti, and Quarteroni (2014) for scatte...
International audienceWe endow P.L. Lions domain decomposition method with a Additive Schwarz Method...
AbstractRadial basis function (RBF) interpolation is a “meshless” strategy with great promise for ad...
The barycentric interpolation formula defines a stable algorithm for evaluation at points in [−1, 1]...
AbstractSome quantitative estimates concerning multi-dimensional rotundity, weak noncompactness, and...
AbstractThe Beppo–Levi native spaces which arise when using polyharmonic splines to interpolate in m...
International audienceWe endow P.L. Lions domain decomposition method with a Additive Schwarz Method...
AbstractWe investigate convergence in a weighted L∞-norm of Hermite-Fejér and Hermite interpolation ...
It is often observed that interpolation based on translates of radial basis functions or non-radial ...
AbstractBased on Peano kernel technique, explicit error bounds (optimal for the highest order deriva...