Literature DB >> 21126179

Causal learning and inference as a rational process: the new synthesis.

Keith J Holyoak1, Patricia W Cheng.   

Abstract

Over the past decade, an active line of research within the field of human causal learning and inference has converged on a general representational framework: causal models integrated with bayesian probabilistic inference. We describe this new synthesis, which views causal learning and inference as a fundamentally rational process, and review a sample of the empirical findings that support the causal framework over associative alternatives. Causal events, like all events in the distal world as opposed to our proximal perceptual input, are inherently unobservable. A central assumption of the causal approach is that humans (and potentially nonhuman animals) have been designed in such a way as to infer the most invariant causal relations for achieving their goals based on observed events. In contrast, the associative approach assumes that learners only acquire associations among important observed events, omitting the representation of the distal relations. By incorporating bayesian inference over distributions of causal strength and causal structures, along with noisy-logical (i.e., causal) functions for integrating the influences of multiple causes on a single effect, human judgments about causal strength and structure can be predicted accurately for relatively simple causal structures. Dynamic models of learning based on the causal framework can explain patterns of acquisition observed with serial presentation of contingency data and are consistent with available neuroimaging data. The approach has been extended to a diverse range of inductive tasks, including category-based and analogical inferences.

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Year:  2011        PMID: 21126179     DOI: 10.1146/annurev.psych.121208.131634

Source DB:  PubMed          Journal:  Annu Rev Psychol        ISSN: 0066-4308            Impact factor:   24.137


  21 in total

1.  Revisiting the role of within-compound associations in cue-interaction phenomena.

Authors:  David Luque; Amanda Flores; Miguel A Vadillo
Journal:  Learn Behav       Date:  2013-03       Impact factor: 1.986

2.  The Rostro-Caudal Axis of Frontal Cortex Is Sensitive to the Domain of Stimulus Information.

Authors:  Jörg Bahlmann; Robert S Blumenfeld; Mark D'Esposito
Journal:  Cereb Cortex       Date:  2014-01-22       Impact factor: 5.357

Review 3.  The neural and computational bases of semantic cognition.

Authors:  Matthew A Lambon Ralph; Elizabeth Jefferies; Karalyn Patterson; Timothy T Rogers
Journal:  Nat Rev Neurosci       Date:  2016-11-24       Impact factor: 34.870

4.  Varieties of perceptual truth and their possible evolutionary roots.

Authors:  Shimon Edelman
Journal:  Psychon Bull Rev       Date:  2014-10-11

Review 5.  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

6.  The Neural Bases of Action-Outcome Learning in Humans.

Authors:  Richard W Morris; Amir Dezfouli; Kristi R Griffiths; Mike E Le Pelley; Bernard W Balleine
Journal:  J Neurosci       Date:  2022-03-16       Impact factor: 6.709

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

Authors:  W James Greville; Adam A Cassar; Mark K Johansen; Marc J Buehner
Journal:  Mem Cognit       Date:  2013-08

8.  Evaluation of ambiguous associations in the amygdala by learning the structure of the environment.

Authors:  Tamas J Madarasz; Lorenzo Diaz-Mataix; Omar Akhand; Edgar A Ycu; Joseph E LeDoux; Joshua P Johansen
Journal:  Nat Neurosci       Date:  2016-05-23       Impact factor: 24.884

Review 9.  A taxonomy of inductive problems.

Authors:  Charles Kemp; Alan Jern
Journal:  Psychon Bull Rev       Date:  2014-02

10.  Causal explanation in the face of contradiction.

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