移动行为实验在线:漂移扩散建模教程和一些建议

IF 2.3 2区 文学 Q2 PSYCHOLOGY, CLINICAL American Behavioral Scientist Pub Date : 2023-11-06 DOI:10.1177/00027642231207073
Xuanjun Gong, Richard Huskey
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引用次数: 0

摘要

行为科学需要熟练的实验和高质量的数据,这些数据通常是亲自收集的。然而,COVID-19大流行迫使许多行为研究实验室关闭。值得庆幸的是,进行在线实验的新工具使研究人员能够以前所未有的精度引发心理反应并收集行为数据。现在可以在网上快速进行大规模、高质量的行为实验,甚至是为生成复杂计算模型所需的数据而设计的研究。然而,这些技术需要新的技能,对于那些更熟悉实验室实验的行为研究人员来说,这可能是不熟悉的。我们提供了一个详细的教程,介绍了一个在线实验管道的端到端构建和相应的数据分析。我们提供了一个使用漂移-扩散模型(DDM)调查人们媒体偏好的示例研究,特别关注在线行为实验带来的潜在问题。本教程包括用于执行和分析在线实验中收集的DDM数据的示例数据和代码,从而减轻了研究人员必须重新发明轮子的程度。
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Moving Behavioral Experimentation Online: A Tutorial and Some Recommendations for Drift Diffusion Modeling
Behavioral science demands skillful experimentation and high-quality data that are typically gathered in person. However, the COVID-19 pandemic forced many behavioral research laboratories to close. Thankfully, new tools for conducting online experiments allow researchers to elicit psychological responses and gather behavioral data with unprecedented precision. It is now possible to quickly conduct large-scale high-quality behavioral experiments online, even for studies designed to generate data necessary for complex computational models. However, these techniques require new skills that might be unfamiliar to behavioral researchers who are more familiar with laboratory-based experimentation. We present a detailed tutorial introducing an end-to-end build of an online experimental pipeline and corresponding data analysis. We provide an example study investigating people’s media preferences using drift-diffusion modeling (DDM), paying particular attention to potential issues that come with online behavioral experimentation. This tutorial includes sample data and code for conducting and analyzing DDM data gathered in an online experiment, thereby mitigating the extent to which researchers must reinvent the wheel.
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来源期刊
CiteScore
6.70
自引率
3.10%
发文量
190
期刊介绍: American Behavioral Scientist has been a valuable source of information for scholars, researchers, professionals, and students, providing in-depth perspectives on intriguing contemporary topics throughout the social and behavioral sciences. Each issue offers comprehensive analysis of a single topic, examining such important and diverse arenas as sociology, international and U.S. politics, behavioral sciences, communication and media, economics, education, ethnic and racial studies, terrorism, and public service. The journal"s interdisciplinary approach stimulates creativity and occasionally, controversy within the emerging frontiers of the social sciences, exploring the critical issues that affect our world and challenge our thinking.
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