Literature DB >> 27261539

Do people reason rationally about causally related events? Markov violations, weak inferences, and failures of explaining away.

Benjamin M Rottman1, Reid Hastie2.   

Abstract

Making judgments by relying on beliefs about the causal relationships between events is a fundamental capacity of everyday cognition. In the last decade, Causal Bayesian Networks have been proposed as a framework for modeling causal reasoning. Two experiments were conducted to provide comprehensive data sets with which to evaluate a variety of different types of judgments in comparison to the standard Bayesian networks calculations. Participants were introduced to a fictional system of three events and observed a set of learning trials that instantiated the multivariate distribution relating the three variables. We tested inferences on chains X1→Y→X2, common cause structures X1←Y→X2, and common effect structures X1→Y←X2, on binary and numerical variables, and with high and intermediate causal strengths. We tested transitive inferences, inferences when one variable is irrelevant because it is blocked by an intervening variable (Markov Assumption), inferences from two variables to a middle variable, and inferences about the presence of one cause when the alternative cause was known to have occurred (the normative "explaining away" pattern). Compared to the normative account, in general, when the judgments should change, they change in the normative direction. However, we also discuss a few persistent violations of the standard normative model. In addition, we evaluate the relative success of 12 theoretical explanations for these deviations.
Copyright © 2016 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Bayesian Networks; Causal inference; Experience; Explaining away; Markov Assumption

Mesh:

Year:  2016        PMID: 27261539     DOI: 10.1016/j.cogpsych.2016.05.002

Source DB:  PubMed          Journal:  Cogn Psychol        ISSN: 0010-0285            Impact factor:   3.468


  8 in total

1.  Failures of explaining away and screening off in described versus experienced causal learning scenarios.

Authors:  Bob Rehder; Michael R Waldmann
Journal:  Mem Cognit       Date:  2017-02

Review 2.  The diversity principle and the evaluation of evidence.

Authors:  Nathan Couch
Journal:  Psychon Bull Rev       Date:  2022-02-22

3.  Discounting and Augmentation in Causal Conditional Reasoning: Causal Models or Shallow Encoding?

Authors:  Simon Hall; Nilufa Ali; Nick Chater; Mike Oaksford
Journal:  PLoS One       Date:  2016-12-28       Impact factor: 3.240

4.  Ordering a Normal Diet at the End of Surgery-Justified or Overhasty?

Authors:  Fabian Grass; Martin Hübner; Jenna K Lovely; Jacopo Crippa; Kellie L Mathis; David W Larson
Journal:  Nutrients       Date:  2018-11-14       Impact factor: 5.717

5.  Characterizing belief bias in syllogistic reasoning: A hierarchical Bayesian meta-analysis of ROC data.

Authors:  Dries Trippas; David Kellen; Henrik Singmann; Gordon Pennycook; Derek J Koehler; Jonathan A Fugelsang; Chad Dubé
Journal:  Psychon Bull Rev       Date:  2018-12

6.  Widening Access to Bayesian Problem Solving.

Authors:  Nicole Cruz; Saoirse Connor Desai; Stephen Dewitt; Ulrike Hahn; David Lagnado; Alice Liefgreen; Kirsty Phillips; Toby Pilditch; Marko Tešić
Journal:  Front Psychol       Date:  2020-04-09

7.  How causal information affects decisions.

Authors:  Min Zheng; Jessecae K Marsh; Jeffrey V Nickerson; Samantha Kleinberg
Journal:  Cogn Res Princ Implic       Date:  2020-02-13

8.  The symptom discounting effect: what to do when negative genetic test results become risk factors for alcohol use disorder.

Authors:  Woo-Kyoung Ahn; Annalise M Perricone
Journal:  Sci Rep       Date:  2022-03-04       Impact factor: 4.379

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.