Estimating sampling biases in citizen science datasets

Author:

Backstrom Louis J.1234,Callaghan Corey T.5,Worthington Hannah34ORCID,Fuller Richard A.12ORCID,Johnston Alison34

Affiliation:

1. Centre for Biodiversity and Conservation Science The University of Queensland Brisbane Queensland Australia

2. School of the Environment The University of Queensland Brisbane Queensland Australia

3. Centre for Research into Ecological and Environmental Modelling University of St Andrews St Andrews UK

4. School of Mathematics and Statistics University of St Andrews St Andrews UK

5. Department of Wildlife Ecology and Conservation, Fort Lauderdale Research and Education Center University of Florida Davie Florida 33314‐7719 USA

Abstract

The rise of citizen science (also called community science) has led to vast quantities of species observation data collected by members of the public. Citizen science data tend to be unevenly distributed across space and time, but the treatment of sampling bias varies between studies, and interactions between different biases are often overlooked. We present a method for conceptualizing and estimating spatial and temporal sampling biases, and interactions between them. We use this method to estimate sampling biases in an example ornithological citizen science dataset from eBird in Brisbane City, Australia. We then explore the effects of these sampling biases on subsequent model inference of population trends, using both a simulation study and an application of the same trend models to the Brisbane eBird dataset. We find varying levels of sampling bias in the Brisbane eBird dataset across temporal and spatial scales, and evidence for interactions between biases. Several of the sampling biases we identified differ from those described in the literature for other datasets, with protected areas being undersampled in the city, and only limited seasonal sampling bias. We demonstrate variable performance of trend models under different sampling bias scenarios, with more complex biases being associated with typically poorer trend estimates. Sampling biases are important to consider when analysing ecological datasets, and analysts can use this method to ensure that any biologically relevant sampling biases are detected and given due consideration during analysis. With appropriate model specification, the effects of sampling biases can be reduced to yield reliable information about biodiversity.

Publisher

Wiley

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