2020 ◽  
Vol 32 (2) ◽  
pp. 301-314
Author(s):  
Mimi Liljeholm

As scientists, we are keenly aware that if putative causes perfectly covary, the independent influence of neither can be discerned—a “no confounding” constraint on inference, fundamental to philosophical and statistical perspectives on causation. Intriguingly, a substantial behavioral literature suggests that naïve human reasoners, adults and children, are tacitly sensitive to causal confounding. Here, a combination of fMRI and computational cognitive modeling was used to investigate neural substrates mediating such sensitivity. While being scanned, participants observed and judged the influences of various putative causes with confounded or nonconfounded, deterministic or stochastic, influences. During judgments requiring generalization of causal knowledge from a feedback-based learning context to a transfer probe, activity in the dorsomedial pFC was better accounted for by a Bayesian causal model, sensitive to both confounding and stochasticity, than a purely error-driven algorithm, sensitive only to stochasticity. Implications for the detection and estimation of distinct forms of uncertainty, and for a neural mediation of domain-general constraints on causal induction, are discussed.


1998 ◽  
Vol 51 (1) ◽  
pp. 65-84 ◽  
Author(s):  
Frédéric Vallée-Tourangeau ◽  
Robin A. Murphy ◽  
Susan Drew ◽  
A.G. Baker

In two causal induction experiments subjects rated the importance of pairs of candidate causes in the production of a target effect; one candidate was present on every trial (constant cause), whereas the other was present on only some trials (variable cause). The design of both experiments consisted of a factorial combination of two values of the variable cause's covariation with the effect and three levels of the base rate of the effect. Judgements of the constant cause were inversely proportional to the level of covariation of the variable cause but were proportional to the base rate of the effect. The judgements were consistent with the predictions derived from the Rescorla-Wagner (1972) model of associative learning and with the predictions of the causal power theory of the probabilistic contrast model (Cheng, 1997) or “power PC theory”. However, judgements of the importance of the variable candidate cause were proportional to the base rate of the effect, a phenomenon that is in some cases anticipated by the power PC theory. An alternative associative model, Pearce's (1987) similarity-based generalization model, predicts the influence of the base rate of the effect on the estimates of both the constant and the variable cause.


Author(s):  
Ikuko HATTORI ◽  
Masasi HATTORI ◽  
Tatsuji TAKAHASHI
Keyword(s):  

2004 ◽  
Author(s):  
Thomas L. Griffiths ◽  
Joshua B. Tenenbaum
Keyword(s):  

2000 ◽  
Vol 28 (7) ◽  
pp. 1213-1230 ◽  
Author(s):  
Michael E. Young ◽  
Janelle L. Johnson ◽  
Edward A. Wasserman

2002 ◽  
Vol 28 (4) ◽  
pp. 331-346 ◽  
Author(s):  
Pedro L. Cobos ◽  
Francisco J. López ◽  
Antonio Caño ◽  
Julián Almaraz ◽  
David R. Shanks
Keyword(s):  

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