Optimeet: A computational tool to enhance participant attendance in group research.

IF 3.9 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Lukas W Mayer, Desislava Bocheva, Joanne Hinds, Olivia Brown, Lukasz Piwek, David A Ellis
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引用次数: 0

Abstract

Across disciplines, research often relies on groups of people to participate in experiments or attend events at the same time. Typically, researchers try to maximize attendance by manually identifying a set of times that suit the diaries of many individuals. However, this is inefficient, is prone to error, and can lead to a final sample that is not large enough to provide meaningful inferences. While current scheduling tools are useful for individual-based research, enabling participants to select times convenient to them within a researcher's preset parameters, they are less useful in research that requires specific or flexible group sizes. In response, we present Optimeet, a web application that allows researchers to upload participants' availability data and generate an optimal allocation schedule for multiple groups. We describe the function of the underlying applet, which identifies a schedule to maximize attendance by treating it as a computational problem involving combinatorial optimization (Experiment 1). Our solution relies on an empirical comparison of parameter-free heuristics to make allocation decisions that make the best use of participants' availabilities and the derivation of appropriate performance metrics. Of the algorithms evaluated, one consistently outperformed comparable versions of existing tools, which we verified in a further exercise (Experiment 2) involving a large human sample (N = 5,289). We consider the methodological utility and practical value of these developments, and include detailed documentation, code, and a video tutorial so that researchers can rapidly employ Optimeet to support group research.

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Optimeet:一种提高小组研究参与者出勤率的计算工具。
跨学科的研究往往依赖于一群人同时参与实验或参加活动。通常情况下,研究人员试图通过手动确定一组适合许多人日记的时间来最大限度地提高出勤率。然而,这是低效的,容易出错,并可能导致最终样本不够大,无法提供有意义的推论。虽然目前的调度工具对基于个人的研究很有用,使参与者能够在研究人员预设的参数范围内选择对他们方便的时间,但它们在需要特定或灵活的群体规模的研究中就不那么有用了。作为回应,我们提出了Optimeet,这是一个网络应用程序,允许研究人员上传参与者的可用性数据,并为多个组生成最佳分配时间表。我们描述了底层applet的功能,它通过将其视为涉及组合优化的计算问题来确定最大出勤率的时间表(实验1)。我们的解决方案依赖于无参数启发式的经验比较来做出分配决策,从而最好地利用参与者的可用性并推导适当的性能指标。在评估的算法中,有一种算法的表现始终优于现有工具的可比版本,我们在涉及大量人类样本(N = 5,289)的进一步练习(实验2)中验证了这一点。我们考虑了这些发展的方法效用和实用价值,并包括详细的文档,代码和视频教程,以便研究人员可以快速使用Optimeet来支持小组研究。
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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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