Learning Causal Polytrees

The essence of causality can be identified with a graphical structure representing relevance relationships between variables. In this paper the problem of infering causal relations from patterns of dependence is considered. We suppose that there exists a causal model, which is representable by a polytree structure and present an approach to the recovering problem. With this approach we can recover efficiently a polytree structure using marginal and conditional independence tests.