A Double machine learning trend model for citizen science data

Author:

Fink Daniel1ORCID,Johnston Alison2ORCID,Strimas‐Mackey Matt1ORCID,Auer Tom1ORCID,Hochachka Wesley M.1ORCID,Ligocki Shawn1ORCID,Oldham Jaromczyk Lauren1,Robinson Orin1ORCID,Wood Chris1,Kelling Steve1,Rodewald Amanda D.1ORCID

Affiliation:

1. Cornell Lab of Ornithology Cornell University Ithaca New York USA

2. Centre for Research into Ecological and Environmental Modelling, School of Maths and Statistics University of St Andrews St Andrews UK

Abstract

Abstract Citizen and community science datasets are typically collected using flexible protocols. These protocols enable large volumes of data to be collected globally every year; however, the consequence is that these protocols typically lack the structure necessary to maintain consistent sampling across years. This can result in complex and pronounced interannual changes in the observation process, which can complicate the estimation of population trends because population changes over time are confounded with changes in the observation process. Here we describe a novel modelling approach designed to estimate spatially explicit species population trends while controlling for the interannual confounding common in citizen science data. The approach is based on Double machine learning, a statistical framework that uses machine learning (ML) methods to estimate population change and the propensity scores used to adjust for confounding discovered in the data. ML makes it possible to use large sets of features to control for confounding and to model spatial heterogeneity in trends. Additionally, we present a simulation method to identify and adjust for residual confounding missed by the propensity scores. To illustrate the approach, we estimated species trends using data from the citizen science project eBird. We used a simulation study to assess the ability of the method to estimate spatially varying trends when faced with realistic confounding and temporal correlation. Results demonstrated the ability to distinguish between spatially constant and spatially varying trends. There were low error rates on the estimated direction of population change (increasing/decreasing) at each location and high correlations on the estimated magnitude of population change. The ability to estimate spatially explicit trends while accounting for confounding inherent in citizen science data has the potential to fill important information gaps, helping to estimate population trends for species and/or regions lacking rigorous monitoring data.

Funder

Leon Levy Foundation

National Science Foundation

Wolf Creek Charitable Foundation

Academy of Finland

Vetenskapsrådet

Norges Forskningsråd

Publisher

Wiley

Subject

Ecological Modeling,Ecology, Evolution, Behavior and Systematics

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