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Misjudgment of interrupted time-series graphs due to serial dependence: Replication of Matyas and Greenwood (1990)

Published online by Cambridge University Press:  01 January 2023

Anthony J. Bishara*
Affiliation:
Department of Psychology, College of Charleston, 66 George St., Charleston, SC 29424
Jacob Peller
Affiliation:
Department of Psychology, College of Charleston
Chad M. Galuska
Affiliation:
Department of Psychology, College of Charleston
*
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Abstract

Interrupted time-series graphs are often judged by eye. Such a graph might show, for example, patient symptom severity (y) on each of several days (x) before and after a treatment was implemented (interruption). Such graphs might be prone to systematic misjudgment because of serial dependence, where random error at each timepoint persists into later timepoints. An earlier study (Matyas & Greenwood, 1990) showed evidence of systematic misjudgment, but that study has often been discounted due to methodological concerns. We address these concerns and others in two experiments. In both experiments, serial dependence increased mistaken judgments that the interrupting event led to a change in the outcome, though the pattern of results was less extreme than in previous work. Receiver operating characteristics suggested that serial dependence both decreased discriminability and increased the bias to decide that the interrupting event led to a change. This serial dependence effect appeared despite financial incentives for accuracy, despite feedback training, and even in participants who had graduate training relevant to the task. Serial dependence could cause random error to be misattributed to real change, thereby leading to judgments that interventions are effective even when they are not.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
The authors license this article under the terms of the Creative Commons Attribution 3.0 License.
Copyright
Copyright © The Authors [2021] This is an Open Access article, distributed under the terms of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Figure 0

Figure 1: Illustration of the impact of random error and serial dependence in a situation where the intervention has no effect (i.e., the Null Hypothesis is true). When serial dependence is absent, error (colored arrows labelled with e) at each time point has no effect on other time points. In contrast, when serial dependence is present, error on each day persists with diminishing effect on the days that follow. The horizontal dashed line indicates an error-free baseline.

Figure 1

Figure 2: An example trial that participants were shown during instructions. Critical trials in the experiment had the same layout, but without the current score shown.

Figure 2

Figure 3: Accuracy in each condition collapsed across confidence levels. Dots show individual participants. Brackets show 95% CIs of the mean.

Figure 3

Figure 4: Type I Error rates as a function of confidence level (upper boxes) and serial dependence. Dots show individual participants. Brackets show 95% CIs of the mean. Dashed lines show the customarily desired Type I error rate of .05.

Figure 4

Figure 5: Receiver Operating Characteristics (ROCs) closer to the upper left corner indicate better discriminability. Specifically, ROCs here show participants’ mean probabilities of correctly declaring a treatment effect (Power) and incorrectly declaring a treatment effect (Type I Error) across all confidence criteria.

Figure 5

Figure 6: Proportion of responses in each confidence category as a function of treatment effect and serial dependence. Brackets show 95% CIs of the mean.