Discovering causal relationships is a hard task, often hindered by the need for intervention, and often requiring large amounts of data to resolve statistical uncertainty. However, humans quickly arrive at useful causal relationships. One possible reason is that humans extrapolate from past experience to new, unseen situations: that is, they encode beliefs over causal invariances, allowing for sound generalization from the observations they obtain from directly acting in the world. Here we outline a Bayesian model of causal induction where beliefs over competing causal hypotheses are modeled using probability trees. Based on this model, we illustrate why, in the general case, we need interventions plus constraints on our causal hypotheses i...
People often struggle when making Bayesian probabilistic estimates on the basis of competing sources...
Abstract—Bayesian probability theory is one of the most successful frameworks to model reasoning und...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of...
Discovering causal relationships is a hard task, often hindered by the need for intervention, and of...
Discovering causal relationships is a hard task, often hindered by the need for intervention, and of...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
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...
The article presents a Bayesian model of causal learning that incorporates generic priors—systematic...
People are adept at inferring novel causal relations, even from only a few observations. Prior knowl...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
How ought we learn causal relationships? While Popper advocated a hypothetico-deductive logic of cau...
Although no universally accepted definition of causality exists, in practice one is often faced with...
People often struggle when making Bayesian probabilistic estimates on the basis of competing sources...
Abstract—Bayesian probability theory is one of the most successful frameworks to model reasoning und...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of...
Discovering causal relationships is a hard task, often hindered by the need for intervention, and of...
Discovering causal relationships is a hard task, often hindered by the need for intervention, and of...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
The human ability to learn quickly about causal relationships requires abstract knowledge that provi...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
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...
The article presents a Bayesian model of causal learning that incorporates generic priors—systematic...
People are adept at inferring novel causal relations, even from only a few observations. Prior knowl...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
How ought we learn causal relationships? While Popper advocated a hypothetico-deductive logic of cau...
Although no universally accepted definition of causality exists, in practice one is often faced with...
People often struggle when making Bayesian probabilistic estimates on the basis of competing sources...
Abstract—Bayesian probability theory is one of the most successful frameworks to model reasoning und...
We present a Bayesian model of causal learning that incorporates generic priors on distributions of...