Linda Altieri, Daniela Cocchi, Giulia Roli
Department of Statistical Sciences, Univeristy of Bologna
Abstract.
Entropy is widely employed in many applied sciences to measure the heterogeneity
of observations. Recently, many attempts have been made to build entropy
measures for spatial data, in order to capture the influence of space over the
variable outcomes. The main limit of these developments is that all indices are
computed conditional on a single distance and do not cover the whole spatial
configuration of the phenomenon under study. Moreover, most of them do not
satisfy the desirable additivity property between local and global spatial
measures. This work reviews some recent developments, based on univariate
distributions, and compares them to a new approach which considers the
properties of entropy measures linked to bivariate distributions. This
perspective introduces substantial innovations. Firstly, Shannon’s entropy may
be decomposed into two terms: spatial mutual information, accounting for the
role of space in determining the variable outcome, and spatial global residual
entropy, summarizing the remaining heterogeneity carried by the variable itself.
Secondly, these terms both satisfy the additivity property, being sums of
partial entropies measuring what happens at different distance classes. The
proposed indices are used for measuring the spatial entropy of a marked point
pattern on rainforest tree species. The new entropy measures are shown to be
more informative and to answer a wider set of questions than the current
proposals of the literature.
Key words:
additivity property, categorical variables, marked spatial point processes,
mutual information, residual entropy, Shannon’s entropy, spatial entropy
Speaker: prof. Daniela Cocchi
The seminar will be held on Thursday 19 April 2018 at 14:00 at the Department of Economics
and Management of the University of Trento (seminar room, 1st floor).
The seminar will be held in English.