Abstract

Around the world volunteers and non-professionals collect data as part of environmental citizen science projects, collecting wildlife observations, measures of water quality and much more. However, where projects allow flexibility in how, where, and when data are collected there will be variation in the behaviour of participants which results in biases in the datasets collected. We develop a method to quantify this behavioural variation, describing the key drivers and providing a tool to account for biases in models that use these data. We used a suite of metrics to describe the temporal and spatial behaviour of participants, as well as variation in the data they collected. These were applied to 5,268 users of the iRecord Butterflies mobile phone app, a multi-species environmental citizen science project. In contrast to previous studies, after removing transient participants (those active on few days and who contribute few records), we do not find evidence of clustering of participants; instead, participants fall along four continuous axes that describe variation in participants’ behaviour: recording intensity, spatial extent, recording potential and rarity recording. Our results support a move away from labelling participants as belonging to one behavioural group or another in favour of placing them along axes of participant behaviour that better represent the continuous variation between individuals. Understanding participant behaviour could support better use of the data, by accounting for biases in the data collection process.

Highlights

  • Around the world volunteers and non-professionals collect data as part of environmental citizen science projects, collecting wildlife observations, measures of water quality and much more

  • Expertise and effort metrics have been used as covariates in occupancy m­ odels[27,29], species distribution m­ odels[29], mixed effects ­models[30,33], logistic ­regressions[32], and generalised additive models (GAMs)[31] where they have been found to improve model performance

  • Over the period January 2014 to September 2017, 169,707 records were submitted by 5,268 participants via the iRecord Butterflies smartphone app. 4,268 (81%) participants were removed from the analysis as they were active on 10 or fewer days, and participant behaviour metrics could not be reliably calculated

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Summary

Introduction

Around the world volunteers and non-professionals collect data as part of environmental citizen science projects, collecting wildlife observations, measures of water quality and much more. Expertise and effort metrics have been used as covariates in occupancy m­ odels[27,29], species distribution m­ odels[29], mixed effects ­models[30,33], logistic ­regressions[32], and generalised additive models (GAMs)[31] where they have been found to improve model performance All these approaches require metadata to be collected by participants during the collection process, so are applicable to only a minority of citizen science projects where these metadata are collected. Where sampling protocols for field-based citizen science are more flexible, participants vary in their spatial pattern of data collection and in the type of data they collect

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