Progress in the R ecosystem for representing and handling spatial data

Author:

Bivand Roger S.ORCID

Abstract

AbstractTwenty years have passed since Bivand and Gebhardt (J Geogr Syst 2(3):307–317, 2000. 10.1007/PL00011460) indicated that there was a good match between the then nascent open-source R programming language and environment and the needs of researchers analysing spatial data. Recalling the development of classes for spatial data presented in book form in Bivand et al. (Applied spatial data analysis with R. Springer, New York, 2008, Applied spatial data analysis with R, 2nd edn. Springer, New York, 2013), it is important to present the progress now occurring in representation of spatial data, and possible consequences for spatial data handling and the statistical analysis of spatial data. Beyond this, it is imperative to discuss the relationships between R-spatial software and the larger open-source geospatial software community on whose work R packages crucially depend.

Funder

Norwegian School Of Economics

Publisher

Springer Science and Business Media LLC

Subject

Economics and Econometrics,Geography, Planning and Development

Reference75 articles.

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4. Baddeley A, Rubak E, Turner R (2015) Spatial point patterns: methodology and applications with R. Chapman and Hall, London

5. Baddeley A, Turner R, Rubak E (2020) spatstat: spatial point pattern analysis, model-fitting, simulation, tests. https://CRAN.R-project.org/package=spatstat, R package version 1.64-1

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