Abstract. Radial Basis Function (RBF) interpolation is a common approach to scattered data interpolation. Gaussian Process regression is also a common approach to estimating statistical data. Both tech-niques play a central role, for example, in statistical or machine learning, and recently they have been increasingly applied in other fields such as computer graphics. In this survey we describe the formulation of both techniques as instances of functional regression in a Reproducing Kernel Hilbert Space. We then show that the RBF and Gaussian Process techniques can in some cases be reduced to an identical formulation, differing primarily in their assumptions on when the data locations and values are known, as well as in their (respectively)...
A fundamental principle in data modelling is to incorporate available a priori information regarding...
In the field of engineering design, tradeoffs between competing design objectives can only be made i...
High-dimensional visualization is usually connected with large data processing. Because of dimension...
Radial Basis Functions (RBF) interpolation theory is briefly introduced at the “application level” i...
The present study employs an idea of mapping data into a high dimensional feature space which is kno...
The radial basis function (RBF) network has been used intensively. Besides its applications, several...
Radial Basis Functions (RBF) interpolation is primarily used for interpolation of scattered data in ...
Interpolation or approximation of scattered data is very often task in engineering problems. The Rad...
Abstract. We explore a connection between Gaussian radial basis functions and polynomials. Using sta...
Introducing a suitable variational formulation for the local error of scattered data interpolation b...
Abstract. We explore a connection between Gaussian radial basis functions and polynomials. Using sta...
Abstract—Reconstruction of a function from noisy data is often formulated as a regularized optimizat...
Abstract. What is now known as the Gibbs phenomenon was first observed in the context of truncated F...
AbstractAn efficient method for the multivariate interpolation of very large scattered data sets is ...
Interpolation based on radial basis functions (RBF) is a standard data map- ping method used in mul...
A fundamental principle in data modelling is to incorporate available a priori information regarding...
In the field of engineering design, tradeoffs between competing design objectives can only be made i...
High-dimensional visualization is usually connected with large data processing. Because of dimension...
Radial Basis Functions (RBF) interpolation theory is briefly introduced at the “application level” i...
The present study employs an idea of mapping data into a high dimensional feature space which is kno...
The radial basis function (RBF) network has been used intensively. Besides its applications, several...
Radial Basis Functions (RBF) interpolation is primarily used for interpolation of scattered data in ...
Interpolation or approximation of scattered data is very often task in engineering problems. The Rad...
Abstract. We explore a connection between Gaussian radial basis functions and polynomials. Using sta...
Introducing a suitable variational formulation for the local error of scattered data interpolation b...
Abstract. We explore a connection between Gaussian radial basis functions and polynomials. Using sta...
Abstract—Reconstruction of a function from noisy data is often formulated as a regularized optimizat...
Abstract. What is now known as the Gibbs phenomenon was first observed in the context of truncated F...
AbstractAn efficient method for the multivariate interpolation of very large scattered data sets is ...
Interpolation based on radial basis functions (RBF) is a standard data map- ping method used in mul...
A fundamental principle in data modelling is to incorporate available a priori information regarding...
In the field of engineering design, tradeoffs between competing design objectives can only be made i...
High-dimensional visualization is usually connected with large data processing. Because of dimension...