The analysis of spatial data by means of Markov random fields usually is based on strict stationarity assumptions. Although these assumptions rarely hold, they are necessary in order to obtain parameter estimates. For Gaussian data the necessary assumptions are mean- and covariance stationarity. While simple techniques are available to deal with violations of mean stationarity, the same is not true for covariance stationarity. In order to handle mean nonstationarity as well as covariance nonstationarity, we propose the modelling by spatially varying coefficients. This aproach not only yields more appropriate models for nonstationary data but also can be used to detect violations of the stationarity assumptions. The method is illustrated by ...
Modelling of kinetics of grain growth process after primary recrystallisation in different types of ...
Generalized linear mixed models are a common tool in statistics which extends generalized linear mod...
We examine the forecasting power of international portfolio flows for local equity markets and attem...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
A simultaneous live/dead and acrosome staining, originally described for domestic mammals, was succe...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
Not AvailableWatershed projects were implemented to support rainfed agriculture in India since 1980s...
We establish the validity of the empirical Edgeworth expansion (EE) for a studentized trimmed mean, ...
The original publication is available at www.springerlink.comInternational audienceBasic algorithms ...
In financial time series transaction price changes often occur in discrete increments, for example i...
International audienceOn propose une nouvelle méthode constructive, systématique et générale des loi...
Generalized linear mixed models are a common tool in statistics which extends generalized linear mod...
AbstractThe way in which cytogenetic aberrations develop in prostate cancer (Cap) is poorly understo...
Modelling of kinetics of grain growth process after primary recrystallisation in different types of ...
Generalized linear mixed models are a common tool in statistics which extends generalized linear mod...
We examine the forecasting power of international portfolio flows for local equity markets and attem...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
A simultaneous live/dead and acrosome staining, originally described for domestic mammals, was succe...
The analysis of spatial data by means of Markov random fields usually is based on strict stationarit...
Not AvailableWatershed projects were implemented to support rainfed agriculture in India since 1980s...
We establish the validity of the empirical Edgeworth expansion (EE) for a studentized trimmed mean, ...
The original publication is available at www.springerlink.comInternational audienceBasic algorithms ...
In financial time series transaction price changes often occur in discrete increments, for example i...
International audienceOn propose une nouvelle méthode constructive, systématique et générale des loi...
Generalized linear mixed models are a common tool in statistics which extends generalized linear mod...
AbstractThe way in which cytogenetic aberrations develop in prostate cancer (Cap) is poorly understo...
Modelling of kinetics of grain growth process after primary recrystallisation in different types of ...
Generalized linear mixed models are a common tool in statistics which extends generalized linear mod...
We examine the forecasting power of international portfolio flows for local equity markets and attem...