Hostname: page-component-89b8bd64d-dvtzq Total loading time: 0 Render date: 2026-05-07T00:23:12.776Z Has data issue: false hasContentIssue false

Epistemic Side-Effect Effect: A Meta-Analysis

Published online by Cambridge University Press:  02 August 2022

Bartosz Maćkiewicz*
Affiliation:
Faculty of Philosophy, University of Warsaw, Warsaw, Poland
Katarzyna Kuś
Affiliation:
Faculty of Philosophy, University of Warsaw, Warsaw, Poland
Katarzyna Paprzycka-Hausman
Affiliation:
Faculty of Philosophy, University of Warsaw, Warsaw, Poland
Marta Zaręba
Affiliation:
Faculty of Philosophy, University of Warsaw, Warsaw, Poland
*
Corresponding author: Bartosz Maćkiewicz. Email: b.mackiewicz@uw.edu.pl
Rights & Permissions [Opens in a new window]

Abstract

Beebe and Buckwalter (2010) made the surprising discovery that people are more inclined to attribute knowledge when norms are violated than when they are conformed to. The epistemic side-effect effect (ESEE) is the analogue of the Knobe effect (Knobe 2003a). ESEE was replicated in a number of experiments. It was also studied under various conditions. We have carried out a meta-analysis of research on ESEE. The results suggest that ESEE is a robust finding but its magnitude is highly variable. Two study-level covariates influence its size: the subject of the knowledge attribution (agent vs third-party) and the type of norm that is violated or complied with. The effect size is not influenced, however, by the manipulation of chances, by whether the story is about a side effect or not, by language or by question phrasing. The impact of the Gettierization of the story is marginally significant.

Information

Type
Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press
Figure 0

Table 1. The type norm in the Nazi study (Knobe 2007; Beebe and Jensen 2012) and in Dice studies (Nadelhoffer 2004; Paprzycka-Hausman 2020; see text for explanation) according to three coding schemes

Figure 1

Table 2. Study-level factors and coding scheme.

Figure 2

Figure 1. Forest plot for all studies on ESEE (distribution of effect sizes and confidence intervals).

Figure 3

Figure 2. Funnel plot for all studies on ESEE (x-axis: observed effect size; y-axis: precision of study measured by standard error).

Figure 4

Figure 3. Bias-corrected funnel plots for all studies on ESEE (x-axis: observed effect size; y-axis: precision of study measured by standard error): Trim-and-Fill method (on the left), outlier-removal method (on the right)

Figure 5

Figure 4. Forest plot for published studies on ESEE (distribution of effect sizes and confidence intervals).

Figure 6

Figure 5. Funnel plot for published studies on ESEE (x-axis: observed effect size; y-axis: precision of study measured by standard error).

Figure 7

Figure 6. Forest plot for close replications of ESEE (distribution of effect sizes and confidence intervals).

Figure 8

Figure 7. Funnel plot for close replications of ESEE (x-axis: observed effect size; y-axis: precision of study measured by standard error).

Figure 9

Figure 8. Bias-corrected (Trim-and-Fill) funnel plots for close replications of ESEE (x-axis: observed effect size; y-axis: precision of study measured by standard error).

Figure 10

Figure 9. On the left: forest plot for third-party ESEE studies (distribution of effect sizes and confidence intervals); on the right: funnel plot for third-party ESEE studies (x-axis: observed effect size; y-axis: precision of study measured by standard error).

Figure 11

Table 3. Three meta-regression models (each uses a different norm coding scheme: Salient, Violated, Present).

Figure 12

Appendix Figure 1. p-curve plot for all studies displaying the observed p-curve and significance results for the right-skewness and flatness test.Note: The observed p-curve includes 71 statistically significant (p < 0.5) results, of which 64 are p < 0.025. There were 27 additional results entered but excluded from p-curve because they were p > 0.05.

Figure 13

Appendix Figure 2. p-curve plot for published studies displaying the observed p-curve and significance results for the right-skewness and flatness test.Note: The observed p-curve includes 54 statistically significant (p < 0.5) results, of which 49 are p < 0.025. There were 25 additional results entered but excluded from p-curve because they were p > 0.05.

Figure 14

Appendix Figure 3. p-curve plot for close replication studies displaying the observed p-curve and significance results for the right-skewness and flatness test.Note: The observed p-curve includes 14 statistically significant (p < 0.05) results, of which 13 are p < 0.025. There were 2 additional results entered but excluded from p-curve because they were p > 0.05.

Figure 15

Appendix Figure 4. p-curve plot for third party studies displaying the observed p-curve and significance results for the right-skewness and flatness test.Note: The observed p-curve includes 8 statistically significant (p < 0.05) results, of which 8 are p < 0.025. There were 8 additional results entered but excluded from p-curve because they were p  > 0.05.