Kernel methods are a popular technique for extending linear models to handle non-linear spatial problems via a mapping to an implicit, high-dimensional feature space. While kernel methods are computationally cheaper than an explicit feature mapping, they are still subject to cubic cost on the number of points. Given only a few thousand locations, this computational cost rapidly outstrips the currently available computational power. This paper aims to provide an overview of kernel methods from first-principals (with a focus on ridge regression) and progress to a review of random Fourier features (RFF), a method that enables the scaling of kernel methods to big datasets. We show how the RFF method is capable of approximating the full kernel m...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
In epidemiological work, outcomes are frequently non-normal, sample sizes may be large, and effects ...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...
Kernel methods constitute a family of powerful machine learning algorithms, which have found wide us...
11 pagesInternational audienceA fundamental drawback of kernel-based statistical models is their lim...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
The universe of mathematical modelling from observational data is a vast space. It consists a cacop...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
© 2017 Springer Science+Business Media, LLC Kernel smoothing of spatial point data can often be impr...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
In epidemiological work, outcomes are frequently non-normal, sample sizes may be large, and effects ...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...
Kernel methods constitute a family of powerful machine learning algorithms, which have found wide us...
11 pagesInternational audienceA fundamental drawback of kernel-based statistical models is their lim...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
The universe of mathematical modelling from observational data is a vast space. It consists a cacop...
Kernel methods are powerful and flexible approach to solve many problems in machine learning. Due to...
© 2017 Springer Science+Business Media, LLC Kernel smoothing of spatial point data can often be impr...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
To accelerate the training of kernel machines, we propose to map the input data to a randomized low-...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
Kernel methods are powerful machine learning techniques which use generic non-linear functions to so...
Coming up with Bayesian models for spatial data is easy, but performing inference with them can be c...
In epidemiological work, outcomes are frequently non-normal, sample sizes may be large, and effects ...