Literature DB >> 19839681

Theory-based causal induction.

Thomas L Griffiths1, Joshua B Tenenbaum.   

Abstract

Inducing causal relationships from observations is a classic problem in scientific inference, statistics, and machine learning. It is also a central part of human learning, and a task that people perform remarkably well given its notorious difficulties. People can learn causal structure in various settings, from diverse forms of data: observations of the co-occurrence frequencies between causes and effects, interactions between physical objects, or patterns of spatial or temporal coincidence. These different modes of learning are typically thought of as distinct psychological processes and are rarely studied together, but at heart they present the same inductive challenge-identifying the unobservable mechanisms that generate observable relations between variables, objects, or events, given only sparse and limited data. We present a computational-level analysis of this inductive problem and a framework for its solution, which allows us to model all these forms of causal learning in a common language. In this framework, causal induction is the product of domain-general statistical inference guided by domain-specific prior knowledge, in the form of an abstract causal theory. We identify 3 key aspects of abstract prior knowledge-the ontology of entities, properties, and relations that organizes a domain; the plausibility of specific causal relationships; and the functional form of those relationships-and show how they provide the constraints that people need to induce useful causal models from sparse data.

Entities:  

Mesh:

Year:  2009        PMID: 19839681     DOI: 10.1037/a0017201

Source DB:  PubMed          Journal:  Psychol Rev        ISSN: 0033-295X            Impact factor:   8.934


  40 in total

1.  Over-imitation is better explained by norm learning than by distorted causal learning.

Authors:  Ben Kenward; Markus Karlsson; Joanna Persson
Journal:  Proc Biol Sci       Date:  2010-10-13       Impact factor: 5.349

2.  Context shapes early diversity in abstract thought.

Authors:  Alexandra Carstensen; Jing Zhang; Gail D Heyman; Genyue Fu; Kang Lee; Caren M Walker
Journal:  Proc Natl Acad Sci U S A       Date:  2019-06-24       Impact factor: 11.205

3.  Sparse code of conflict in a primate society.

Authors:  Bryan C Daniels; David C Krakauer; Jessica C Flack
Journal:  Proc Natl Acad Sci U S A       Date:  2012-08-13       Impact factor: 11.205

4.  Incremental implicit learning of bundles of statistical patterns.

Authors:  Ting Qian; T Florian Jaeger; Richard N Aslin
Journal:  Cognition       Date:  2016-09-15

5.  The effects of problem content and scientific background on information search and the assessment and valuation of correlations.

Authors:  Shira Soffer; Yaakov Kareev
Journal:  Mem Cognit       Date:  2011-01

6.  The texture of causal construals: Domain-specific biases shape causal inferences from discourse.

Authors:  Brent Strickland; Ike Silver; Frank C Keil
Journal:  Mem Cognit       Date:  2017-04

Review 7.  How to never be wrong.

Authors:  Samuel J Gershman
Journal:  Psychon Bull Rev       Date:  2019-02

8.  A psychological approach to learning causal networks.

Authors:  Manaf Zargoush; Farrokh Alemi; Vinzenzo Esposito Vinzi; Jee Vang; Raya Kheirbek
Journal:  Health Care Manag Sci       Date:  2013-09-19

9.  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

10.  Bayesian learning and the psychology of rule induction.

Authors:  Ansgar D Endress
Journal:  Cognition       Date:  2013-03-01
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