The article presents a Bayesian model of causal learning that incorporates generic priors—systematic assumptions about abstract properties of a system of cause–effect relations. The proposed generic priors for causal learning favor sparse and strong (SS) causes—causes that are few in number and high in their individual powers to produce or prevent effects. The SS power model couples these generic priors with a causal generating function based on the assumption that unobservable causal influences on an effect operate independently (P. W. Cheng, 1997). The authors tested this and other Bayesian models, as well as leading nonnormative models, by fitting multiple data sets in which several parameters were varied parametrically across multiple t...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
The article presents a Bayesian model of causal learning that incorporates generic priors—systematic...
The article presents a Bayesian model of causal learning that incorporates generic priors—systematic...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of ...
Thesis (Ph.D.)--University of Washington, 2017-03This dissertation is composed of three major compon...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
Abstract Recent work on causal learning has investigated the possible role of generic priors in guid...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
The article presents a Bayesian model of causal learning that incorporates generic priors—systematic...
The article presents a Bayesian model of causal learning that incorporates generic priors—systematic...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of ...
Thesis (Ph.D.)--University of Washington, 2017-03This dissertation is composed of three major compon...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
Abstract Recent work on causal learning has investigated the possible role of generic priors in guid...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
We formulate four alternative Bayesian models of causal strength judgments, and compare their predic...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...