Quantifying temporal change in biodiversity: challenges and opportunities
Author(s) -
María Dornelas,
Anne E. Magurran,
S. T. Buckland,
Anne Chao,
Robin L. Chazdon,
Robert K. Colwell,
Thomas P. Curtis,
Kevin J. Gaston,
Nicholas J. Gotelli,
Matthew A. Kosnik,
Brian J. McGill,
Jenny L. McCune,
Hélène Morlon,
Peter J. Mumby,
Lise Øvreås,
Angelika Studeny,
Mark Vellend
Publication year - 2012
Publication title -
proceedings of the royal society b biological sciences
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.342
H-Index - 253
eISSN - 1471-2954
pISSN - 0962-8452
DOI - 10.1098/rspb.2012.1931
Subject(s) - biodiversity , autocorrelation , curse of dimensionality , time series , change detection , environmental change , global change , feature (linguistics) , data science , environmental resource management , climate change , computer science , geography , ecology , environmental science , statistics , artificial intelligence , machine learning , biology , mathematics , linguistics , philosophy
Growing concern about biodiversity loss underscores the need to quantify and understand temporal change. Here, we review the opportunities presented by biodiversity time series, and address three related issues: (i) recognizing the characteristics of temporal data; (ii) selecting appropriate statistical procedures for analysing temporal data; and (iii) inferring and forecasting biodiversity change. With regard to the first issue, we draw attention to defining characteristics of biodiversity time series—lack of physical boundaries, uni-dimensionality, autocorrelation and directionality—that inform the choice of analytic methods. Second, we explore methods of quantifying change in biodiversity at different timescales, noting that autocorrelation can be viewed as a feature that sheds light on the underlying structure of temporal change. Finally, we address the transition from inferring to forecasting biodiversity change, highlighting potential pitfalls associated with phase-shifts and novel conditions.
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