Four principles for improved statistical ecology

Author:

Popovic Gordana1ORCID,Mason Tanya Jane23ORCID,Drobniak Szymon Marian45ORCID,Marques Tiago André67ORCID,Potts Joanne8ORCID,Joo Rocío9ORCID,Altwegg Res10ORCID,Burns Carolyn Claire Isabelle11,McCarthy Michael Andrew12ORCID,Johnston Alison13ORCID,Nakagawa Shinichi4ORCID,McMillan Louise14ORCID,Devarajan Kadambari1516ORCID,Taggart Patrick Leo17ORCID,Wunderlich Alison18ORCID,Mair Magdalena M.1920ORCID,Martínez‐Lanfranco Juan Andrés21ORCID,Lagisz Malgorzata4ORCID,Pottier Patrice4ORCID

Affiliation:

1. Stats Central Mark Wainwright Analytical Centre UNSW Sydney Sydney New South Wales Australia

2. Centre for Ecosystem Science, School of Biological, Earth and Environmental Sciences UNSW Sydney Sydney New South Wales Australia

3. Science, Economics and Insights Division NSW Department of Climate Change, Energy, the Environment and Water Lidcombe New South Wales Australia

4. Evolution and Ecology Research Centre, School of Biological, Earth and Environmental Sciences UNSW Sydney Sydney New South Wales Australia

5. Institute of Environmental Sciences Jagiellonian University Krakow Poland

6. Centre for Research into Ecological and Environmental Modelling, The Observatory University of St Andrews St Andrews Scotland

7. Centro de Estatística e Aplicações Departamento de Biologia Animal, Faculdade de Ciências da Universidade de Lisboa Lisbon Portugal

8. The Analytical Edge Statistical Consulting Blackmans Bay Tasmania Australia

9. Global Fishing Watch Washington District of Columbia USA

10. Centre for Statistics in Ecology, Environment and Conservation, Department of Statistical Sciences University of Cape Town Rondebosch South Africa

11. Sydney New South Wales Australia

12. School of Agriculture, Food and Ecosystem Sciences The University of Melbourne Parkville Victoria Australia

13. Centre for Research into Ecological and Environmental Modelling, Mathematics and Statistics University of St Andrews St Andrews UK

14. School of Mathematics and Statistics Victoria University of Wellington Wellington New Zealand

15. Organismic and Evolutionary Biology Graduate Program University of Massachusetts at Amherst Amherst Massachusetts USA

16. Department of Natural Resources Science University of Rhode Island Kingston Rhode Island USA

17. Vertebrate Pest Research Unit Department of Primary Industries NSW Queanbeyan New South Wales Australia

18. Institute of Biosciences São Paulo State University São Vicente São Paulo Brazil

19. Statistical Ecotoxicology University of Bayreuth Bayreuth Germany

20. Theoretical Ecology University of Regensburg Regensburg Germany

21. Department of Biological Sciences University of Alberta Edmonton Alberta Canada

Abstract

Abstract Increasing attention has been drawn to the misuse of statistical methods over recent years, with particular concern about the prevalence of practices such as poor experimental design, cherry picking and inadequate reporting. These failures are largely unintentional and no more common in ecology than in other scientific disciplines, with many of them easily remedied given the right guidance. Originating from a discussion at the 2020 International Statistical Ecology Conference, we show how ecologists can build their research following four guiding principles for impactful statistical research practices: (1) define a focussed research question, then plan sampling and analysis to answer it; (2) develop a model that accounts for the distribution and dependence of your data; (3) emphasise effect sizes to replace statistical significance with ecological relevance; and (4) report your methods and findings in sufficient detail so that your research is valid and reproducible. These principles provide a framework for experimental design and reporting that guards against unsound practices. Starting with a well‐defined research question allows researchers to create an efficient study to answer it, and guards against poor research practices that lead to poor estimation of the direction, magnitude, and uncertainty of ecological relationships, and to poor replicability. Correct and appropriate statistical models give sound conclusions. Good reporting practices and a focus on ecological relevance make results impactful and replicable. Illustrated with two examples—an experiment to study the impact of disturbance on upland wetlands, and an observational study on blue tit colouring—this paper explains the rationale for the selection and use of effective statistical practices and provides practical guidance for ecologists seeking to improve their use of statistical methods.

Funder

Fundação de Amparo à Pesquisa do Estado de São Paulo

Publisher

Wiley

Subject

Ecological Modeling,Ecology, Evolution, Behavior and Systematics

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