In the last years there has been a growing interest in proposing methods for estimating covariance functions for geostatistical data. Among these, maximum likelihood estimators have nice features when we deal with a Gaussian model. However maximum likelihood becomes impractical when the number of observations is very large. In this work we review some solutions and we contrast them in terms of loss of statistical efficiency and computational burden. Specifically we focus on three types of weighted composite likelihood functions based on pairs and we compare them with the method of covariance tapering. Asymptotic properties of the three estimation methods are derived. We illustrate the effectiveness of the methods through theoretical example...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
In this article, we propose two methods for estimating space and space-time covariance functions fro...
In this article, we propose two methods for estimating space and space-time covariance functions fro...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
Maximum likelihood is an attractive method of estimating covariance parameters in spatial models bas...
Parameter estimation and inference in a geostatistical model is often made challenging due to t...
Composite likelihood methods have become popular in spatial statistics. This is mainly due to the fa...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
In this article, we propose two methods for estimating space and space-time covariance functions fro...
In this article, we propose two methods for estimating space and space-time covariance functions fro...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
Maximum likelihood is an attractive method of estimating covariance parameters in spatial models bas...
Parameter estimation and inference in a geostatistical model is often made challenging due to t...
Composite likelihood methods have become popular in spatial statistics. This is mainly due to the fa...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
This article gives a narrative overview of what constitutes climatological data and their typical fe...
In this article, we propose two methods for estimating space and space-time covariance functions fro...
In this article, we propose two methods for estimating space and space-time covariance functions fro...