## A Bayesian Approach to Causal Discovery (1997)

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Citations: | 80 - 1 self |

### BibTeX

@TECHREPORT{Heckerman97abayesian,

author = {David Heckerman and Christopher Meek and Gregory Cooper},

title = {A Bayesian Approach to Causal Discovery},

institution = {},

year = {1997}

}

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### Abstract

We examine the Bayesian approach to the discovery of directed acyclic causal models and compare it to the constraint-based approach. Both approaches rely on the Causal Markov assumption, but the two differ significantly in theory and practice. An important difference between the approaches is that the constraint-based approach uses categorical information about conditional-independence constraints in the domain, whereas the Bayesian approach weighs the degree to which such constraints hold. As a result, the Bayesian approach has three distinct advantages over its constraint-based counterpart. One, conclusions derived from the Bayesian approach are not susceptible to incorrect categorical decisions about independence facts that can occur with data sets of finite size. Two, using the Bayesian approach, finer distinctions among model structures---both quantitative and qualitative---can be made. Three, information from several models can be combined to make better inferences and to better ...