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Regular articles

Temporal predictability enhances judgements of causality in elemental causal induction from both observation and intervention

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Pages 678-697 | Received 08 Aug 2014, Accepted 09 Apr 2015, Published online: 21 May 2015
 

Abstract

When the temporal interval or delay separating cause and effect is consistent over repeated instances, it becomes possible to predict when the effect will follow from the cause, hence temporal predictability serves as an appropriate term for describing consistent cause-effect delays. It has been demonstrated that in instrumental action-outcome learning tasks, enhancing temporal predictability by holding the cause-effect interval constant elicits higher judgements of causality compared to conditions involving variable temporal intervals. Here, we examine whether temporal predictability exerts a similar influence when causal learning takes place through observation rather than intervention through instrumental action. Four experiments demonstrated that judgements of causality were higher when the temporal interval was constant than when it was variable, and that judgements declined with increasing variability. We further found that this beneficial effect of predictability was stronger in situations where the effect base-rate was zero (Experiments 1 and 3). The results therefore clearly indicate that temporal predictability enhances impressions of causality, and that this effect is robust and general. Factors that could mediate this effect are discussed.

Notes

1In Experiments 1, 3 and 4, observed data were derived from a free-operant paradigm and as such some variation in the rates of occurrence of causes (and effects) across experimental conditions was expected. However, cue and outcome density effects (e.g., Allan & Jenkins, Citation1983) whereby higher rates of event occurrence tend to elicit higher causal ratings, are typically limited to discrete trials procedures and not found using the free-operant procedure (Msetfi, Murphy, Simpson, & Kornbrot, Citation2005; Wasserman, Elek, Chatlosh, & Baker, Citation1993; Wasserman et al., Citation1983) and hence any such variations are not examined further in this paper.

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