This paper reviews recent advances made in testing in spatial statistics and discussed at the Spatial Statistics conference in Avignon 2015. The rank and directional quantile envelope tests are discussed and practical rules for their use are provided. These tests are global envelope tests with an appropriate type I error probability. Two novel examples are given on their usage. First, in addition to the test based on a classical one-dimensional summary function, the goodness-of-fit of a point process model is evaluated by means of the test based on a higher dimensional functional statistic, namely a two-dimensional smoothed residual field. Second, a goodness-of-fit test of a geostatistical model is performed based on two-dimensional raw res...
Rao\u27s score test provides an extremely useful framework for developing diagnostics against hypoth...
We summarize and discuss the current state of spatial point process theory and directions for future...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
This paper reviews recent advances made in testing in spatial statistics and discussed at the Spatia...
Envelope tests are a popular tool in goodness-of-fit testing in spatial statistics. These tests grap...
Copyright © 2003 Elsevier LtdThe authors introduce the D-statistic for testing for a constant spatia...
Spatially dependent residuals arise as a result of missing or misspecified spatial variables in a mo...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
This article proposes two new classes of nonparametric tests for the correct specification of linear...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
The distribution of a variable observed over a domain depends on the underlying process and also on...
International audienceThe distribution of a variable observed over a domain depends on the underlyin...
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...
This paper presents a modified LM test of spatial error components, which is shown to be robust agai...
Rao\u27s score test provides an extremely useful framework for developing diagnostics against hypoth...
We summarize and discuss the current state of spatial point process theory and directions for future...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
This paper reviews recent advances made in testing in spatial statistics and discussed at the Spatia...
Envelope tests are a popular tool in goodness-of-fit testing in spatial statistics. These tests grap...
Copyright © 2003 Elsevier LtdThe authors introduce the D-statistic for testing for a constant spatia...
Spatially dependent residuals arise as a result of missing or misspecified spatial variables in a mo...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
This article proposes two new classes of nonparametric tests for the correct specification of linear...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
The distribution of a variable observed over a domain depends on the underlying process and also on...
International audienceThe distribution of a variable observed over a domain depends on the underlyin...
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...
This paper presents a modified LM test of spatial error components, which is shown to be robust agai...
Rao\u27s score test provides an extremely useful framework for developing diagnostics against hypoth...
We summarize and discuss the current state of spatial point process theory and directions for future...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...