Incorporating Prior Causal Knowledge when learning Causal Models in…
Knowledge in the form “A causes B” and “A does not cause B” is often available. For example, in an experiment where temperature (A) is controlled, then for any quantity B that changes we can infer A causes B. Our new publication in ICML shows how to incorporate such knowledge when inducing a causal models from other datasets.