The spectral representation of stationary Gaussian processes via the Fourier basis provides a computationally efficient specification of spatial surfaces and nonparametric regression functions for use in various statistical models. I describe the representation in detail and introduce the spectralGP package in R for computations. Because of the large number of basis coefficients, some form of shrinkage is necessary; I focus on a natural Bayesian approach via a particular parameterized prior structure that approximates stationary Gaussian processes on a regular grid. I review several models from the literature for data that do not lie on a grid, suggest a simple model modification, and provide example code demonstrating MCMC sampling using t...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
The spectral representation of stationary Gaussian processes via the Fourier basis provides a comput...
Gaussian processes (GPs) are widely used as distributions of random effects in linear mixed models, ...
Gaussian processes (GPs) are widely used as distributions of random effects in linear mixed models, ...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...
The Bayesian spectral analysis model (BSAM) is a powerful tool to deal with semiparametric methods i...
Gaussian processes (GPs) are natural generalisations of multivariate Gaussian random variables to in...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
The spectral representation of stationary Gaussian processes via the Fourier basis provides a comput...
Gaussian processes (GPs) are widely used as distributions of random effects in linear mixed models, ...
Gaussian processes (GPs) are widely used as distributions of random effects in linear mixed models, ...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...
The Bayesian spectral analysis model (BSAM) is a powerful tool to deal with semiparametric methods i...
Gaussian processes (GPs) are natural generalisations of multivariate Gaussian random variables to in...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
This work brings together two powerful concepts in Gaussian processes: the variational approach to s...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...
International audienceThis work brings together two powerful concepts in Gaussian processes: the var...