数据采集与分析优化的结构预规范

IF 3.1 3区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
M. Vowels
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引用次数: 0

摘要

数据收集和研究方法是研究管道的关键部分。一方面,重要的是,我们收集数据的方式,最大限度地提高我们正在测量的有效性,这可能涉及到使用长尺度与许多项目。另一方面,在多个尺度上收集大量的项目会导致参与者疲劳,以及昂贵和耗时的数据收集。因此,我们最好地利用现有资源是很重要的。在这项工作中,我们考虑理论作为因果/结构模型的表示如何通过不浪费时间收集对回答研究问题没有因果关系的变量的数据来帮助我们简化数据收集和分析程序。这不仅节省了时间,使我们能够将资源重新分配到其他更重要的变量上,而且还增加了研究的透明度和理论检验的可靠性。为了实现这一目标,我们利用结构模型和这些模型中隐含的马尔可夫条件独立结构来识别对特定研究问题至关重要的子结构。为了演示这种简化的好处,我们回顾了相关的概念,并给出了一些说教性的例子,包括一个现实世界的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prespecification of Structure for the Optimization of Data Collection and Analysis
Data collection and research methodology represents a critical part of the research pipeline. On the one hand, it is important that we collect data in a way that maximises the validity of what we are measuring, which may involve the use of long scales with many items. On the other hand, collecting a large number of items across multiple scales results in participant fatigue, and expensive and time consuming data collection. It is therefore important that we use the available resources optimally. In this work, we consider how the representation of a theory as a causal/structural model can help us to streamline data collection and analysis procedures by not wasting time collecting data for variables which are not causally critical for answering the research question. This not only saves time and enables us to redirect resources to attend to other variables which are more important, but also increases research transparency and the reliability of theory testing. To achieve this, we leverage structural models and the Markov conditional independency structures implicit in these models, to identify the substructures which are critical for a particular research question. To demonstrate the benefits of this streamlining we review the relevant concepts and present a number of didactic examples, including a real-world example.
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来源期刊
Collabra-Psychology
Collabra-Psychology PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
3.60
自引率
4.00%
发文量
47
审稿时长
16 weeks
期刊介绍: Collabra: Psychology has 7 sections representing the broad field of psychology, and a highlighted focus area of “Methodology and Research Practice.” Are: Cognitive Psychology Social Psychology Personality Psychology Clinical Psychology Developmental Psychology Organizational Behavior Methodology and Research Practice.
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