The human capacity for causal judgment has long been thought to depend on an ability to consider counterfactual alternatives: the lightning strike caused the forest fire because had it not struck, the forest fire would not have ensued. To accommodate psychological effects on causal judgment, a range of recent accounts of causal judgment have proposed that people probabilistically sample counterfactual alternatives from which they compute a graded index of causal strength. While such models have had success in describing the influence of probability on causal judgments, among other effects, we show that these models make further untested predictions: probability should also influence people's metacognitive confidence in their causal judgment...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
Contemporary models of subjective probability distortions assume that distortions arise during proba...
People often makes inductive inferences that go beyond the data that are given. In order to generate...
The human capacity for causal judgment has long been thought to depend on an ability to consider cou...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...
Existing research suggests that people's judgments of actual causation can be influenced by the degr...
Petrusic and Baranski (2009) concluded that confidence is a general property of human judgment. Howe...
gmail.com Causal inference is a fundamental component of cognition and perception. Probabilistic the...
In this paper, we demonstrate that people’s causal judgments are inextricably linked to counterfactu...
When people want to identify the causes of an event, assign credit or blame, or learn from their mis...
An outstanding issue in cognitive science is whether the computational principles that apply to caus...
How do people make causal judgments? Here, we propose a counterfactual simulation model (CSM) of cau...
We examined whether raising uncertainty about the causes of one\u27s judgments motivates correction....
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
People’s causal judgments exhibit substantial variability, but the processes that lead to this varia...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
Contemporary models of subjective probability distortions assume that distortions arise during proba...
People often makes inductive inferences that go beyond the data that are given. In order to generate...
The human capacity for causal judgment has long been thought to depend on an ability to consider cou...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...
Existing research suggests that people's judgments of actual causation can be influenced by the degr...
Petrusic and Baranski (2009) concluded that confidence is a general property of human judgment. Howe...
gmail.com Causal inference is a fundamental component of cognition and perception. Probabilistic the...
In this paper, we demonstrate that people’s causal judgments are inextricably linked to counterfactu...
When people want to identify the causes of an event, assign credit or blame, or learn from their mis...
An outstanding issue in cognitive science is whether the computational principles that apply to caus...
How do people make causal judgments? Here, we propose a counterfactual simulation model (CSM) of cau...
We examined whether raising uncertainty about the causes of one\u27s judgments motivates correction....
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
People’s causal judgments exhibit substantial variability, but the processes that lead to this varia...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
Contemporary models of subjective probability distortions assume that distortions arise during proba...
People often makes inductive inferences that go beyond the data that are given. In order to generate...