A very recent proposal of a set of entropy measures for spatial data, based on building pairs of realizations, allows to split the data heterogeneity that is usually assessed via Shannon's entropy into two components: spatial mutual information, identifying the role of space, and spatial residual entropy, measuring heterogeneity due to other sources. A further decomposition into partial terms deeply investigates the role of space at specific distance ranges. The present work proposes improvements to the method and adds relevant results proving that the new set of spatial entropies satisfies a list of desirable properties. We extend the methodology to sets of realizations greater than pairs. We also show that the approach is more general, be...
The concept of entropy connected with GIS is relatively new. Its mathematical background was defined...
The concept of "spatial entropy" developed by Michael Batty (1974) was primarily used to test diffe...
In this paper we revisit the concept of entropy as it manifests itself in spatial terms. We focus sp...
A very recent proposal of a set of entropy measures for spatial data, based on building pairs of rea...
Entropy is widely employed in many applied sciences to measure the heterogeneity of observations. Re...
Entropy is a measure of heterogeneity widely used in applied sciences, often when data are collected...
Entropy measures are standard tools in environmental and ecological sciences to describe the heterog...
Distinguishing and characterizing different landscape patterns have long been the primary concerns o...
When it comes to characterize the distribution of ‘things’ observed spatially and identified by thei...
The lack of efficiency in urban diffusion is a debated issue, important for biologists, urban speci...
In this paper a new measure of spatial association, the S statistics, is developed. The proposed mea...
Entropy measures were first introduced into geographical analysis during a period when the concept o...
Understanding the structuration of spatio-temporal information is a common endeavour to many discipl...
Understanding the structuration of spatio-temporal information is a common endeavour to many discipl...
The concept of entropy connected with GIS is relatively new. Its mathematical background was defined...
The concept of "spatial entropy" developed by Michael Batty (1974) was primarily used to test diffe...
In this paper we revisit the concept of entropy as it manifests itself in spatial terms. We focus sp...
A very recent proposal of a set of entropy measures for spatial data, based on building pairs of rea...
Entropy is widely employed in many applied sciences to measure the heterogeneity of observations. Re...
Entropy is a measure of heterogeneity widely used in applied sciences, often when data are collected...
Entropy measures are standard tools in environmental and ecological sciences to describe the heterog...
Distinguishing and characterizing different landscape patterns have long been the primary concerns o...
When it comes to characterize the distribution of ‘things’ observed spatially and identified by thei...
The lack of efficiency in urban diffusion is a debated issue, important for biologists, urban speci...
In this paper a new measure of spatial association, the S statistics, is developed. The proposed mea...
Entropy measures were first introduced into geographical analysis during a period when the concept o...
Understanding the structuration of spatio-temporal information is a common endeavour to many discipl...
Understanding the structuration of spatio-temporal information is a common endeavour to many discipl...
The concept of entropy connected with GIS is relatively new. Its mathematical background was defined...
The concept of "spatial entropy" developed by Michael Batty (1974) was primarily used to test diffe...
In this paper we revisit the concept of entropy as it manifests itself in spatial terms. We focus sp...