When Scientists Become Social Scientists: How Citizen Science Projects Learn About Volunteers
Peter T. Darch

TL;DR
This paper examines how the Galaxy Zoo team learns about volunteers through qualitative methods, influencing project decisions and improving data quality in citizen science projects.
Contribution
It provides a detailed case study on knowledge acquisition about volunteers and offers practical recommendations for enhancing these processes in citizen science.
Findings
Multiple information sources shape volunteer understanding.
Tacit and explicit knowledge influence decision-making.
Improved knowledge circulation benefits project outcomes.
Abstract
Online citizen science projects involve recruitment of volunteers to assist researchers with the creation, curation, and analysis of large datasets. Enhancing the quality of these data products is a fundamental concern for teams running citizen science projects. Decisions about a project's design and operations have a critical effect both on whether the project recruits and retains enough volunteers, and on the quality of volunteers' work. The processes by which the team running a project learn about their volunteers play a critical role in these decisions. Improving these processes will enhance decision-making, resulting in better quality datasets, and more successful outcomes for citizen science projects. This paper presents a qualitative case study, involving interviews and long-term observation, of how the team running Galaxy Zoo, a major citizen science project in astronomy, came…
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