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?. Chi2result and . Chi2_adequation_test, DataSet) 5: if Chi2Result=false then 6: 7: for i = 0 to num_neighbors do 8: Add_edge(Node_exp, Neigh_List[i], Actual_BN) 9: end for 10: else 11: 12: for i = 0 to num_neighbors do 13: Add_edge(Neigh_List[i], Node_exp, Actual_BN) 14: end for 15: end if 16: return Actual_BN Algorithm 4 Maximax-SemCaDo Require: Actual_BN, N ode_X, Neigh_List ? Node_X, vol.1, issue.3

?. Neigh_list and . Find_non_directed_neighbors, Actual_BN, Node_X) 13: 14: for i = 0 to Neigh_List.size() do 15: nb_instantiations ? nb_instantiations

?. Neigh_list and . Find_non_directed_neighbors, Actual_BN, Node_X) 13: 14: for i = 0 to Neigh_List.size() do 15: nb_instantiations ? nb_instantiations

?. Neigh_list and . Find_non_directed_neighbors, Actual_BN, Node_X) 13: 14: for i = 0 to Neigh_List.size() do 15: nb_instantiations ? nb_instantiations