International audienceThe distribution of a variable observed over a domain depends on the underlying process and also on the geographical locations at which the variable has been measured. In this paper, we fit a model to the distribution supposing that the observations are generated by a stationary strong-mixing random field. Indeed, after estimating the density of the considered variable, we construct a test statistic in order to verify the goodness of fit of the observed spatial data. The proposed class of tests is a generalization of the classical chi-squaretest and of the Neyman smooth test. In the framework of increasing domain asymptotics, we analyse the large sample behaviour of the test. The limiting distribution is a linear combi...
The most of the existing LM tests for spatial dependence are derived under the assumption that error...
<p>This article considers a simple test for the correct specification of linear spatial autoregressi...
We propose a random effects panel data model with both spatially correlated error components and spa...
International audienceThe distribution of a variable observed over a domain depends on the underlyin...
The distribution of a variable observed over a domain depends on the underlying process and also on...
In analysing the distribution of a variable in a space, each value is subject not only to the source...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
If spatial data do not have an underlying normal distribution, the traditional tests for spatial cor...
We consider spatially homogeneous marked point patterns in an unboundedly expanding convex sampling ...
The problem of testing homogeneity in contingency tables when the data are spatially correlated is c...
We consider the problem of non-parametric testing of independence of two components of a stationary ...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
This paper reviews recent advances made in testing in spatial statistics and discussed at the Spatia...
Copyright © 2003 Elsevier LtdThe authors introduce the D-statistic for testing for a constant spatia...
The most of the existing LM tests for spatial dependence are derived under the assumption that error...
<p>This article considers a simple test for the correct specification of linear spatial autoregressi...
We propose a random effects panel data model with both spatially correlated error components and spa...
International audienceThe distribution of a variable observed over a domain depends on the underlyin...
The distribution of a variable observed over a domain depends on the underlying process and also on...
In analysing the distribution of a variable in a space, each value is subject not only to the source...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
If spatial data do not have an underlying normal distribution, the traditional tests for spatial cor...
We consider spatially homogeneous marked point patterns in an unboundedly expanding convex sampling ...
The problem of testing homogeneity in contingency tables when the data are spatially correlated is c...
We consider the problem of non-parametric testing of independence of two components of a stationary ...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
This paper reviews recent advances made in testing in spatial statistics and discussed at the Spatia...
Copyright © 2003 Elsevier LtdThe authors introduce the D-statistic for testing for a constant spatia...
The most of the existing LM tests for spatial dependence are derived under the assumption that error...
<p>This article considers a simple test for the correct specification of linear spatial autoregressi...
We propose a random effects panel data model with both spatially correlated error components and spa...