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Citizen science frontiers: Efficiency engagement and serendipitous discovery with human–machine systems

机译:公民科学前沿:人机系统的效率参与度和偶然发现

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摘要

Citizen science has proved to be a unique and effective tool in helping science and society cope with the ever-growing data rates and volumes that characterize the modern research landscape. It also serves a critical role in engaging the public with research in a direct, authentic fashion and by doing so promotes a better understanding of the processes of science. To take full advantage of the onslaught of data being experienced across the disciplines, it is essential that citizen science platforms leverage the complementary strengths of humans and machines. This Perspectives piece explores the issues encountered in designing human–machine systems optimized for both efficiency and volunteer engagement, while striving to safeguard and encourage opportunities for serendipitous discovery. We discuss case studies from Zooniverse, a large online citizen science platform, and show that combining human and machine classifications can efficiently produce results superior to those of either one alone and how smart task allocation can lead to further efficiencies in the system. While these examples make clear the promise of human–machine integration within an online citizen science system, we then explore in detail how system design choices can inadvertently lower volunteer engagement, create exclusionary practices, and reduce opportunity for serendipitous discovery. Throughout we investigate the tensions that arise when designing a human–machine system serving the dual goals of carrying out research in the most efficient manner possible while empowering a broad community to authentically engage in this research.
机译:事实证明,公民科学是一种独特而有效的工具,可以帮助科学和社会应对不断增长的代表现代研究格局的数据速率和数据量。它还在以直接,真实的方式使公众参与研究中发挥了关键作用,从而促进了人们对科学过程的更好理解。为了充分利用跨学科的数据冲击,公民科学平台必须充分利用人机互补的优势。本“观点”文章探讨了在设计旨在提高效率和志愿者参与度的人机系统时遇到的问题,同时努力维护和鼓励偶然发现的机会。我们讨论了来自大型在线公民科学平台Zooniverse的案例研究,并表明结合了人机分类和机器分类可以有效地产生优于单独一个人的结果,并且智能任务分配可以如何提高系统效率。尽管这些示例清楚地说明了在在线公民科学系统中实现人机集成的希望,但我们随后将详细探讨系统设计的选择如何无意间降低了志愿者的参与度,创造了排他性的实践并减少了偶然发现的机会。在整个过程中,我们研究了设计人机系统时所产生的压力,该人机系统以尽可能高效的方式进行研究并同时使广大社区真正从事这项研究成为可能。

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