Making sense of (exceptional) causal relations. A cross-cultural and cross-linguistic study
Olivier Le Guen, Jana Samland, Thomas Friedrich, Daniel Hanus, Penelope Brown

TL;DR
This study explores how different cultures and languages interpret causal and non-causal relationships, revealing that concepts like chance or randomness are not universally understood.
Contribution
The paper introduces a cross-cultural and cross-linguistic framework to investigate how people interpret non-law-like causal relations.
Findings
Causality is recognized across all four cultural groups, but interpretations vary by cultural background and language.
The Action-to-Outcome link is most critical for recognizing causality in all groups.
The Mayan groups differ in their ideologies about non-law-like relations despite shared cultural backgrounds.
Abstract
In order to make sense of the world, humans tend to see causation almost everywhere. Although most causal relations may seem straightforward, they are not always construed in the same way cross-culturally. In this study, we investigate concepts of “chance,” “coincidence,” or “randomness” that refer to assumed relations between intention, action, and outcome in situations, and we ask how people from different cultures make sense of such non-law-like connections. Based on a framework proposed by Alicke (2000), we administered a task that aims to be a neutral tool for investigating causal construals cross-culturally and cross-linguistically. Members of four different cultural groups, rural Mayan Yucatec and Tseltal speakers from Mexico and urban students from Mexico and Germany, were presented with a set of scenarios involving various types of causal and non-causal relations and were asked…
Genes, proteins, chemicals, diseases, species, mutations and cell lines named across the full text — each resolved to its canonical identifier and authoritative record.
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Taxonomy
TopicsConstruction Project Management and Performance · Human Resource and Talent Management · Value Engineering and Management
