Causal inference from observed cases is a central cognitive challenge. There has been some evidence for individual differences in causal learning strategies, but prior work has not examined fine-grained sequences of judgments. In this paper, we report a large-scale model-fitting effort to determine the best-fitting causal inference models for individual participants. We fit a range of different model-types against multiple judgment sequences from each participant, thereby enabling comparisons of learning strategy both between- and within-participant. The model-fitting effort revealed some diversity in learning strategy along both dimensions, though individuals did exhibit some stability. Overall, however, the model fits were worse than expe...
Many theories of contingency learning assume (either explicitly or implicitly) that predicting wheth...
Analyzing the data of individuals has several advantages over analyzing the data combined across the...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...
Recent studies suggest that humans can infer the underlying causal model from observing the distribu...
People’s causal judgments exhibit substantial variability, but the processes that lead to this varia...
Causal models are representations of causal structures and processes in the world. In this thesis tw...
Most research on step-by-step causal learning has focused on the various possible effects early corr...
People often makes inductive inferences that go beyond the data that are given. In order to generate...
Many evaluations of cognitive models rely on data that have been averaged or aggregated across all e...
The human capacity for causal judgment has long been thought to depend on an ability to consider cou...
Thesis (Ph.D.)--University of Washington, 2017-03This dissertation is composed of three major compon...
Much of human cognition and activity depends on causal beliefs and reasoning. In psychological resea...
Many evaluations of cognitive models rely on data that have been averaged or aggregated across all e...
An outstanding issue in cognitive science is whether the computational principles that apply to caus...
We investigate whether people rely on their causal intuitions to determine the predictive value or i...
Many theories of contingency learning assume (either explicitly or implicitly) that predicting wheth...
Analyzing the data of individuals has several advantages over analyzing the data combined across the...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...
Recent studies suggest that humans can infer the underlying causal model from observing the distribu...
People’s causal judgments exhibit substantial variability, but the processes that lead to this varia...
Causal models are representations of causal structures and processes in the world. In this thesis tw...
Most research on step-by-step causal learning has focused on the various possible effects early corr...
People often makes inductive inferences that go beyond the data that are given. In order to generate...
Many evaluations of cognitive models rely on data that have been averaged or aggregated across all e...
The human capacity for causal judgment has long been thought to depend on an ability to consider cou...
Thesis (Ph.D.)--University of Washington, 2017-03This dissertation is composed of three major compon...
Much of human cognition and activity depends on causal beliefs and reasoning. In psychological resea...
Many evaluations of cognitive models rely on data that have been averaged or aggregated across all e...
An outstanding issue in cognitive science is whether the computational principles that apply to caus...
We investigate whether people rely on their causal intuitions to determine the predictive value or i...
Many theories of contingency learning assume (either explicitly or implicitly) that predicting wheth...
Analyzing the data of individuals has several advantages over analyzing the data combined across the...
Leading accounts of judgment under uncertainty evaluate performance within purely statistical framew...