Literature DB >> 7720361

The role of covariation versus mechanism information in causal attribution.

W K Ahn1, C W Kalish, D L Medin, S A Gelman.   

Abstract

Traditional approaches to causal attribution propose that information about covariation of factors is used to identify causes of events. In contrast, we present a series of studies showing that people seek out and prefer information about causal mechanisms rather than information about covariation. Experiments 1, 2 and 3 asked subjects to indicate the kind of information they would need for causal attribution. The subjects tended to seek out information that would provide evidence for or against hypotheses about underlying mechanisms. When asked to provide causes, the subjects' descriptions were also based on causal mechanisms. In Experiment 4, subjects received pieces of conflicting evidence matching in covariation values but differing in whether the evidence included some statement of a mechanism. The influence of evidence was significantly stronger when it included mechanism information. We conclude that people do not treat the task of causal attribution as one of identifying a novel causal relationship between arbitrary factors by relying solely on covariation information. Rather, people attempt to seek out causal mechanisms in developing a causal explanation for a specific event.

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Year:  1995        PMID: 7720361     DOI: 10.1016/0010-0277(94)00640-7

Source DB:  PubMed          Journal:  Cognition        ISSN: 0010-0277


  28 in total

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9.  Memory accessibility shapes explanation: Testing key claims of the inherence heuristic account.

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10.  Structural awareness mitigates the effect of delay in human causal learning.

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