Causal learning with interrupted time series data

IF 1.9 3区 心理学 Q2 PSYCHOLOGY, MULTIDISCIPLINARY Judgment and Decision Making Pub Date : 2023-01-01 DOI:10.1017/jdm.2023.29
Yiwen Zhang, Benjamin M. Rottman
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Abstract

People often test changes to see if the change is producing the desired result (e.g., does taking an antidepressant improve my mood, or does keeping to a consistent schedule reduce a child’s tantrums?). Despite the prevalence of such decisions in everyday life, it is unknown how well people can assess whether the change has influenced the result. According to interrupted time series analysis (ITSA), doing so involves assessing whether there has been a change to the mean (‘level’) or slope of the outcome, after versus before the change. Making this assessment could be hard for multiple reasons. First, people may have difficulty understanding the need to control the slope prior to the change. Additionally, one may need to remember events that occurred prior to the change, which may be a long time ago. In Experiments 1 and 2, we tested how well people can judge causality in 9 ITSA situations across 4 presentation formats in which participants were presented with the data simultaneously or in quick succession. We also explored individual differences. In Experiment 3, we tested how well people can judge causality when the events were spaced out once per day, mimicking a more realistic timeframe of how people make changes in their lives. We found that participants were able to learn accurate causal relations when there is a zero pre-intervention slope in the time series but had difficulty controlling for nonzero pre-intervention slopes. We discuss these results in terms of 2 heuristics that people might use.
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中断时间序列数据的因果学习
人们经常测试变化,看看变化是否产生了预期的结果(例如,服用抗抑郁药是否改善了我的情绪,或者保持一致的时间表是否减少了孩子的发脾气?)尽管这种决定在日常生活中很普遍,但人们能否很好地评估这种变化是否影响了结果尚不清楚。根据中断时间序列分析(ITSA),这样做涉及评估在变化之后与变化之前,结果的平均值(“水平”)或斜率是否发生了变化。由于多种原因,做出这种评估可能很困难。首先,人们可能很难理解在变化之前控制坡度的必要性。此外,您可能需要记住在更改之前发生的事件,这可能是很久以前的事情。在实验1和2中,我们测试了人们在9种ITSA情境中判断因果关系的能力,这些情境包括4种呈现形式,参与者同时或快速连续地呈现数据。我们还探讨了个体差异。在实验3中,我们测试了当事件每天间隔一次时,人们如何判断因果关系,模拟人们如何在生活中做出改变的更现实的时间框架。我们发现,当时间序列中存在零预干预斜率时,参与者能够准确地学习因果关系,但在控制非零预干预斜率时,参与者很难。我们根据人们可能使用的两种启发式来讨论这些结果。
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来源期刊
Judgment and Decision Making
Judgment and Decision Making PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
4.40
自引率
8.00%
发文量
0
审稿时长
12 weeks
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