Ecole de Psychoeducation, Universite de Montreal.
School of Arts and Sciences, Franciscan Missionaries of Our Lady University.
Psychol Methods. 2024 Feb;29(1):202-218. doi: 10.1037/met0000487. Epub 2022 Jul 7.
Since the start of the 21st century, few advances have had as far-reaching impact in science as the widespread adoption of artificial neural networks in fields as diverse as fundamental physics, clinical medicine, and psychology. In research methods, one promising area for the adoption of artificial neural networks involves the analysis of single-case experimental designs. Given that these types of networks are not generally part of training in the psychological sciences, the purpose of our article is to provide a step-by-step introduction to using artificial neural networks to analyze single-case designs. To this end, we trained a new model using data from a Monte Carlo simulation to analyze multiple baseline graphs and compared its outcomes with traditional methods of analysis. In addition to showing that artificial neural networks may produce less error than other methods, this tutorial provides information to facilitate the replication and extension of this line of work to other designs and datasets. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
自 21 世纪初以来,在科学领域,很少有进展能像人工神经网络在基础物理学、临床医学和心理学等多个领域的广泛应用那样具有深远影响。在研究方法中,人工神经网络采用的一个很有前景的领域涉及到对单案例实验设计的分析。鉴于这些类型的网络通常不是心理科学培训的一部分,我们的文章的目的是提供一个逐步介绍如何使用人工神经网络来分析单案例设计的方法。为此,我们使用来自蒙特卡罗模拟的数据来训练一个新模型,以分析多个基线图,并将其结果与传统的分析方法进行比较。除了表明人工神经网络可能比其他方法产生的错误更少之外,本教程还提供了信息,以方便对其他设计和数据集进行复制和扩展。