The rationality of human causal judgments has been the focus of a great deal of recent research. We argue against two major trends in this research, and for a quite different way of thinking about causal mechanisms and probabilistic data. Our position rejects a false dichotomy between "mechanistic" and "probabilistic" analyses of causal inference -- a dichotomy that both overlooks the nature of the evidence that supports the induction of mechanisms and misses some important probabilistic implications of mechanisms. This dichotomy has obscured an alternative conception of causal learning: for discrete events, a central adaptive task is to induce causal mechanisms in the environment from probabilistic data and prior knowledge. Viewed from thi...
When evaluating the efficacy of causal candidates, peoples' judgments may be influenced by both the ...
Current models of causal induction are seriously compromised because they cannot represent variation...
Nearly every theory of causal induction assumes that the existence and strength of causal relations ...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
In recent years the search for a proper formal definition of actual causation -- i.e., the relation ...
Many theorists take causality to be the heart of scientific explanation. If we couple this view with...
People often struggle when making Bayesian probabilistic estimates on the basis of competing sources...
I argue that psychologists interested in human causal judgment should understand and adopt a represe...
How humans infer causation from covariation has been the subject of a vigorous debate, most recently...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...
International audienceIf A caused B and B caused C, did A cause C? Although laypersons commonly perc...
Causal reasoning is an important and complex process, in which individuals have multiple sources of...
NoCausal inference is perhaps the most important form of reasoning in the sciences. A panoply of dis...
gmail.com Causal inference is a fundamental component of cognition and perception. Probabilistic the...
Much of human cognition and activity depends on causal beliefs and reasoning. In psychological resea...
When evaluating the efficacy of causal candidates, peoples' judgments may be influenced by both the ...
Current models of causal induction are seriously compromised because they cannot represent variation...
Nearly every theory of causal induction assumes that the existence and strength of causal relations ...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
In recent years the search for a proper formal definition of actual causation -- i.e., the relation ...
Many theorists take causality to be the heart of scientific explanation. If we couple this view with...
People often struggle when making Bayesian probabilistic estimates on the basis of competing sources...
I argue that psychologists interested in human causal judgment should understand and adopt a represe...
How humans infer causation from covariation has been the subject of a vigorous debate, most recently...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...
International audienceIf A caused B and B caused C, did A cause C? Although laypersons commonly perc...
Causal reasoning is an important and complex process, in which individuals have multiple sources of...
NoCausal inference is perhaps the most important form of reasoning in the sciences. A panoply of dis...
gmail.com Causal inference is a fundamental component of cognition and perception. Probabilistic the...
Much of human cognition and activity depends on causal beliefs and reasoning. In psychological resea...
When evaluating the efficacy of causal candidates, peoples' judgments may be influenced by both the ...
Current models of causal induction are seriously compromised because they cannot represent variation...
Nearly every theory of causal induction assumes that the existence and strength of causal relations ...