Skip to Main content Skip to Navigation
Journal articles

Revisiting Guerry's data: introducing spatial constraints in multivariate analysis.

Abstract : Standard multivariate analysis methods aim to identify and summarize the main structures in large data sets containing the description of a number of observations by several variables. In many cases, spatial information is also available for each observation, so that a map can be associated to the multivariate data set. Two main objectives are relevant in the analysis of spatial multivariate data: summarizing covariation structures and identifying spatial patterns. In practice, achieving both goals simultaneously is a statistical challenge, and a range of methods have been developed that offer trade-offs between these two objectives. In an applied context, this methodological question has been and remains a major issue in community ecology, where species assemblages (i.e., covariation between species abundances) are often driven by spatial processes (and thus exhibit spatial patterns). In this paper we review a variety of methods developed in community ecology to investigate multivariate spatial patterns. We present different ways of incorporating spatial constraints in multivariate analysis and illustrate these different approaches using the famous data set on moral statistics in France published by Andre-Michel Guerry in 1833. We discuss and compare the properties of these different approaches both from a practical and theoretical viewpoint.
Document type :
Journal articles
Complete list of metadata

https://hal.archives-ouvertes.fr/hal-00698434
Contributor : Stéphane Delmotte Connect in order to contact the contributor
Submitted on : Wednesday, May 16, 2012 - 2:49:39 PM
Last modification on : Sunday, September 25, 2022 - 3:56:54 AM

Links full text

Identifiers

Collections

Citation

S. Dray, T. Jombart. Revisiting Guerry's data: introducing spatial constraints in multivariate analysis.. Annals of Applied Statistics, Institute of Mathematical Statistics, 2011, 5 (4), pp.2278-2299. ⟨10.1214/10-AOAS356⟩. ⟨hal-00698434⟩

Share

Metrics

Record views

63