In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum likelihood estimation combined with kriging. For massive data sets, kriging is computationally intensive, both in terms of CPU time and memory, and so fixed rank kriging has been proposed as a solution. The method however still involves operations on large matrices, so we develop an alteration to this method by utilizing the approximations made in fixed rank kriging combined with restricted maximum likelihood estimation and sparse matrix methodology. Experiments show that our methodology can provide additional gains in computational efficiency over fixed-rank kriging without loss of accuracy in prediction. The methodology is applied to climat...
In this article, we review and compare a number of methods of spatial prediction, where each method ...
In this document, we describe Fixed Rank Kriging (FRK), an approach to the analysis of very large sp...
International audienceKriging of very large spatial datasets is challenging. Sometimes a spatial dat...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
Spatial statistics for very large spatial data sets is challenging. The size of the data set, "n", c...
Abstract in Undetermined patial data sets are analysed in many scientific disciplines. Kriging, i.e....
Recently, some specific random fields have been defined based on multivariate distributions. This pa...
Spatial statistics for very large spatial data sets is challenging. The size n of the data set cause...
<p>The spatial random effects model is flexible in modeling spatial covariance functions and is comp...
Large spatial datasets are becoming ubiquitous in environmental sciences with the explosion in the ...
Spatial interpolation is performed to predict data values of unseen locations based on the distribut...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...
The Gaussian distribution is the most fundamental distribution in statistics. However, many applicat...
International audienceKriging of very large spatial datasets is a challenging problem. The size nn o...
In this article, we review and compare a number of methods of spatial prediction, where each method ...
In this document, we describe Fixed Rank Kriging (FRK), an approach to the analysis of very large sp...
International audienceKriging of very large spatial datasets is challenging. Sometimes a spatial dat...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
Spatial statistics for very large spatial data sets is challenging. The size of the data set, "n", c...
Abstract in Undetermined patial data sets are analysed in many scientific disciplines. Kriging, i.e....
Recently, some specific random fields have been defined based on multivariate distributions. This pa...
Spatial statistics for very large spatial data sets is challenging. The size n of the data set cause...
<p>The spatial random effects model is flexible in modeling spatial covariance functions and is comp...
Large spatial datasets are becoming ubiquitous in environmental sciences with the explosion in the ...
Spatial interpolation is performed to predict data values of unseen locations based on the distribut...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...
The Gaussian distribution is the most fundamental distribution in statistics. However, many applicat...
International audienceKriging of very large spatial datasets is a challenging problem. The size nn o...
In this article, we review and compare a number of methods of spatial prediction, where each method ...
In this document, we describe Fixed Rank Kriging (FRK), an approach to the analysis of very large sp...
International audienceKriging of very large spatial datasets is challenging. Sometimes a spatial dat...