Global models and predictions of plant diversity based on advanced machine learning techniques

Lirong Cai*, Holger Kreft, Amanda Taylor, Pierre Denelle, Julian Schrader, Franz Essl, Mark van Kleunen, Jan Pergl, Petr Pyšek, Anke Stein, Marten Winter, Julie F. Barcelona, Nicol Fuentes, Inderjit, Dirk Nikolaus Karger, John Kartesz, Andreij Kuprijanov, Misako Nishino, Daniel Nickrent, Arkadiusz NowakAnnette Patzelt, Pieter B. Pelser, Paramjit Singh, Jan J. Wieringa, Patrick Weigelt*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

97 Citations (Scopus)
140 Downloads (Pure)

Abstract

• Despite the paramount role of plant diversity for ecosystem functioning, biogeochemical cycles, and human welfare, knowledge of its global distribution is still incomplete, hampering basic research and biodiversity conservation. 

• Here, we used machine learning (random forests, extreme gradient boosting, and neural networks) and conventional statistical methods (generalized linear models and generalized additive models) to test environment-related hypotheses of broad-scale vascular plant diversity gradients and to model and predict species richness and phylogenetic richness worldwide. To this end, we used 830 regional plant inventories including c. 300 000 species and predictors of past and present environmental conditions. 

• Machine learning showed a superior performance, explaining up to 80.9% of species richness and 83.3% of phylogenetic richness, illustrating the great potential of such techniques for disentangling complex and interacting associations between the environment and plant diversity. Current climate and environmental heterogeneity emerged as the primary drivers, while past environmental conditions left only small but detectable imprints on plant diversity. 

• Finally, we combined predictions from multiple modeling techniques (ensemble predictions) to reveal global patterns and centers of plant diversity at multiple resolutions down to 7774 km2. Our predictive maps provide accurate estimates of global plant diversity available at grain sizes relevant for conservation and macroecology.

Original languageEnglish
Pages (from-to)1432-1445
Number of pages14
JournalNew Phytologist
Volume237
Issue number4
Early online date14 Nov 2022
DOIs
Publication statusPublished - Feb 2023

Bibliographical note

Copyright the Author(s) 2022. Version archived for private and non-commercial use with the permission of the author/s and according to publisher conditions. For further rights please contact the publisher.

Keywords

  • biodiversity
  • diversity–environment models
  • phylogenetic diversity
  • species richness
  • vascular plants

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