Literature DB >> 17366304

Inferences about unobserved causes in human contingency learning.

York Hagmayer1, Michael R Waldmann.   

Abstract

Estimates of the causal efficacy of an event need to take into account the possible presence and influence of other unobserved causes that might have contributed to the occurrence of the effect. Current theoretical approaches deal differently with this problem. Associative theories assume that at least one unobserved cause is always present. In contrast, causal Bayes net theories (including Power PC theory) hypothesize that unobserved causes may be present or absent. These theories generally assume independence of different causes of the same event, which greatly simplifies modelling learning and inference. In two experiments participants were requested to learn about the causal relation between a single cause and an effect by observing their co-occurrence (Experiment 1) or by actively intervening in the cause (Experiment 2). Participants' assumptions about the presence of an unobserved cause were assessed either after each learning trial or at the end of the learning phase. The results show an interesting dissociation. Whereas there was a tendency to assume interdependence of the causes in the online judgements during learning, the final judgements tended to be more in the direction of an independence assumption. Possible explanations and implications of these findings are discussed.

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Year:  2007        PMID: 17366304     DOI: 10.1080/17470210601002470

Source DB:  PubMed          Journal:  Q J Exp Psychol (Hove)        ISSN: 1747-0218            Impact factor:   2.143


  7 in total

1.  BUCKLE: a model of unobserved cause learning.

Authors:  Christian C Luhmann; Woo-Kyoung Ahn
Journal:  Psychol Rev       Date:  2007-07       Impact factor: 8.934

Review 2.  Mental imagery in animals: Learning, memory, and decision-making in the face of missing information.

Authors:  Aaron P Blaisdell
Journal:  Learn Behav       Date:  2019-09       Impact factor: 1.986

Review 3.  Reasoning about causal relationships: Inferences on causal networks.

Authors:  Benjamin Margolin Rottman; Reid Hastie
Journal:  Psychol Bull       Date:  2013-04-01       Impact factor: 17.737

4.  Effect of grouping of evidence types on learning about interactions between observed and unobserved causes.

Authors:  Benjamin Margolin Rottman; Woo-kyoung Ahn
Journal:  J Exp Psychol Learn Mem Cogn       Date:  2011-08-08       Impact factor: 3.051

5.  Causal structure learning over time: observations and interventions.

Authors:  Benjamin M Rottman; Frank C Keil
Journal:  Cogn Psychol       Date:  2011-12-07       Impact factor: 3.468

6.  Learning history and cholinergic modulation in the dorsal hippocampus are necessary for rats to infer the status of a hidden event.

Authors:  Cynthia D Fast; M Melissa Flesher; Nathanial A Nocera; Michael S Fanselow; Aaron P Blaisdell
Journal:  Hippocampus       Date:  2016-01-20       Impact factor: 3.899

7.  Causal explanation in the face of contradiction.

Authors:  Juhwa Park; Steven A Sloman
Journal:  Mem Cognit       Date:  2014-07
  7 in total

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