2017
DOI: 10.1016/j.ejor.2016.09.061
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Statistical analysis of complex and spatially dependent data: A review of Object Oriented Spatial Statistics

Abstract: We review recent advances in Object Oriented Spatial Statistics, a system of ideas, algorithms and methods that allows the analysis of high dimensional and complex data when their spatial dependence is an important issue. At the intersection of different disciplines – including mathematics, statistics, computer science and engineering – Object Oriented Spatial Statistics provides the right perspective to address key problems in varied contexts, from Earth and life sciences to urban planning. We illustrate a fe… Show more

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Cited by 45 publications
(45 citation statements)
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References 76 publications
(111 reference statements)
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“…Delicado et al . () and Menafoglio and Secchi ()), estimation of R requires assumptions such as isotropy, i.e. that Rfalse(sj,sjfalse)=gfalse(false‖boldsjboldsjfalse‖false) for some g , to pool data across neighbouring sites.…”
Section: Spatial Correlations and Clusteringmentioning
confidence: 99%
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“…Delicado et al . () and Menafoglio and Secchi ()), estimation of R requires assumptions such as isotropy, i.e. that Rfalse(sj,sjfalse)=gfalse(false‖boldsjboldsjfalse‖false) for some g , to pool data across neighbouring sites.…”
Section: Spatial Correlations and Clusteringmentioning
confidence: 99%
“…(), Secchi et al . () and Menafoglio and Secchi (), among others, but again in the context of a single datum per site, which does not enable direct estimation of spatial correlations and requires assumptions such as isotropy; in our application, the availability of many replications per site enables us to estimate spatial correlations directly and without isotropy assumptions, which, in fact, we show does not hold for the bike sharing network.…”
Section: Introductionmentioning
confidence: 99%
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“…In the following developments, we will always consider as ambient space for the analysis a Hilbert space. The use of a Hilbert-space embedding for functional geostatistics is well-documented in the literature (see e.g., [Menafoglio and Secchi, 2017] for a review). Its mathematical and application-oriented convenience is twofold: (i) it allows working by analogy with the scalar setting, providing strong intuitions and interpretations to the concepts involved (e.g., for the concepts of variogram); and (ii) it allows working in a very general setting, which may even involve functional constrained data (e.g., PDFs, [Menafoglio et al, 2014]).…”
Section: A Trace-cokriging Predictor For Multivariate Hilbert Datamentioning
confidence: 99%
“…It aims at conducting statistical analyses of complex data that cannot be embedded in the standard Euclidean framework (see Marron and Alonso, 2014, with discus-5 sion), by contrast with more traditional data sets composed of numbers or vectors of numbers that naturally lie in a Euclidean space in which standard statistical methods can be applied. Shapes (Dryden and Mardia, 1998), images (Locantore et al, 1999;Wei et al, 2016), manifold-valued data such as directional data (Mardia, 1972), trees (Wang and Marron, 2007), covariance 10 matrices and operators (Dryden et al, 2009;Pigoli et al, 2014), density functions (Menafoglio and Secchi, 2017) are examples of so-called object data. Investigating the relationships between these complex objects requires the development of appropriate statistical tools that can be either generalizations of existing Euclidean methods or novel non-standard approaches (see 15 Sangalli et al, 2014).…”
Section: Introductionmentioning
confidence: 99%