class TestMarkovModelMethods(unittest.TestCase): def setUp(self): self.graph = MarkovModel() def test_get_cardinality(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) self.assertDictEqual(self.graph.get_cardinality(), {}) phi1 = DiscreteFactor(['a', 'b'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi1) self.assertDictEqual(self.graph.get_cardinality(), {'a': 1, 'b': 2}) self.graph.remove_factors(phi1) self.assertDictEqual(self.graph.get_cardinality(), {}) phi1 = DiscreteFactor(['a', 'b'], [2, 2], np.random.rand(4)) phi2 = DiscreteFactor(['c', 'd'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi1, phi2) self.assertDictEqual(self.graph.get_cardinality(), { 'd': 2, 'a': 2, 'b': 2, 'c': 1 }) phi3 = DiscreteFactor(['d', 'a'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi3) self.assertDictEqual(self.graph.get_cardinality(), { 'd': 1, 'c': 1, 'b': 2, 'a': 2 }) self.graph.remove_factors(phi1, phi2, phi3) self.assertDictEqual(self.graph.get_cardinality(), {}) def test_get_cardinality_check_cardinality(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) phi1 = DiscreteFactor(['a', 'b'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi1) self.assertRaises(ValueError, self.graph.get_cardinality, check_cardinality=True) phi2 = DiscreteFactor(['a', 'c'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi2) self.assertRaises(ValueError, self.graph.get_cardinality, check_cardinality=True) phi3 = DiscreteFactor(['c', 'd'], [2, 2], np.random.rand(4)) self.graph.add_factors(phi3) self.assertDictEqual( self.graph.get_cardinality(check_cardinality=True), { 'd': 2, 'c': 2, 'b': 2, 'a': 1 }) def test_check_model(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) phi1 = DiscreteFactor(['a', 'b'], [1, 2], np.random.rand(2)) phi2 = DiscreteFactor(['c', 'b'], [3, 2], np.random.rand(6)) phi3 = DiscreteFactor(['c', 'd'], [3, 4], np.random.rand(12)) phi4 = DiscreteFactor(['d', 'a'], [4, 1], np.random.rand(4)) self.graph.add_factors(phi1, phi2, phi3, phi4) self.assertTrue(self.graph.check_model()) self.graph.remove_factors(phi1, phi4) phi1 = DiscreteFactor(['a', 'b'], [4, 2], np.random.rand(8)) self.graph.add_factors(phi1) self.assertTrue(self.graph.check_model()) def test_check_model1(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) phi1 = DiscreteFactor(['a', 'b'], [1, 2], np.random.rand(2)) phi2 = DiscreteFactor(['b', 'c'], [3, 3], np.random.rand(9)) self.graph.add_factors(phi1, phi2) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi2) phi3 = DiscreteFactor(['c', 'a'], [4, 4], np.random.rand(16)) self.graph.add_factors(phi3) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi3) phi2 = DiscreteFactor(['b', 'c'], [2, 3], np.random.rand(6)) phi3 = DiscreteFactor(['c', 'd'], [3, 4], np.random.rand(12)) phi4 = DiscreteFactor(['d', 'a'], [4, 3], np.random.rand(12)) self.graph.add_factors(phi2, phi3, phi4) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi2, phi3, phi4) phi2 = DiscreteFactor(['a', 'b'], [1, 3], np.random.rand(3)) self.graph.add_factors(phi1, phi2) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi2) def test_check_model2(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) phi1 = DiscreteFactor(['a', 'c'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi1) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi1) phi1 = DiscreteFactor(['a', 'b'], [1, 2], np.random.rand(2)) phi2 = DiscreteFactor(['a', 'c'], [1, 2], np.random.rand(2)) self.graph.add_factors(phi1, phi2) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi1, phi2) phi1 = DiscreteFactor(['a', 'b'], [1, 2], np.random.rand(2)) phi2 = DiscreteFactor(['b', 'c'], [2, 3], np.random.rand(6)) phi3 = DiscreteFactor(['c', 'd'], [3, 4], np.random.rand(12)) phi4 = DiscreteFactor(['d', 'a'], [4, 1], np.random.rand(4)) phi5 = DiscreteFactor(['d', 'b'], [4, 2], np.random.rand(8)) self.graph.add_factors(phi1, phi2, phi3, phi4, phi5) self.assertRaises(ValueError, self.graph.check_model) self.graph.remove_factors(phi1, phi2, phi3, phi4, phi5) def test_factor_graph(self): phi1 = DiscreteFactor(['Alice', 'Bob'], [3, 2], np.random.rand(6)) phi2 = DiscreteFactor(['Bob', 'Charles'], [2, 2], np.random.rand(4)) self.graph.add_edges_from([('Alice', 'Bob'), ('Bob', 'Charles')]) self.graph.add_factors(phi1, phi2) factor_graph = self.graph.to_factor_graph() self.assertIsInstance(factor_graph, FactorGraph) self.assertListEqual( sorted(factor_graph.nodes()), ['Alice', 'Bob', 'Charles', 'phi_Alice_Bob', 'phi_Bob_Charles']) self.assertListEqual( hf.recursive_sorted(factor_graph.edges()), [['Alice', 'phi_Alice_Bob'], ['Bob', 'phi_Alice_Bob'], ['Bob', 'phi_Bob_Charles'], ['Charles', 'phi_Bob_Charles']]) self.assertListEqual(factor_graph.get_factors(), [phi1, phi2]) def test_factor_graph_raises_error(self): self.graph.add_edges_from([('Alice', 'Bob'), ('Bob', 'Charles')]) self.assertRaises(ValueError, self.graph.to_factor_graph) def test_junction_tree(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) phi1 = DiscreteFactor(['a', 'b'], [2, 3], np.random.rand(6)) phi2 = DiscreteFactor(['b', 'c'], [3, 4], np.random.rand(12)) phi3 = DiscreteFactor(['c', 'd'], [4, 5], np.random.rand(20)) phi4 = DiscreteFactor(['d', 'a'], [5, 2], np.random.random(10)) self.graph.add_factors(phi1, phi2, phi3, phi4) junction_tree = self.graph.to_junction_tree() self.assertListEqual(hf.recursive_sorted(junction_tree.nodes()), [['a', 'b', 'd'], ['b', 'c', 'd']]) self.assertEqual(len(junction_tree.edges()), 1) def test_junction_tree_single_clique(self): self.graph.add_edges_from([('x1', 'x2'), ('x2', 'x3'), ('x1', 'x3')]) phi = [ DiscreteFactor(edge, [2, 2], np.random.rand(4)) for edge in self.graph.edges() ] self.graph.add_factors(*phi) junction_tree = self.graph.to_junction_tree() self.assertListEqual(hf.recursive_sorted(junction_tree.nodes()), [['x1', 'x2', 'x3']]) factors = junction_tree.get_factors() self.assertEqual(factors[0], factor_product(*phi)) def test_markov_blanket(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c')]) self.assertListEqual(self.graph.markov_blanket('a'), ['b']) self.assertListEqual(sorted(self.graph.markov_blanket('b')), ['a', 'c']) def test_local_independencies(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c')]) independencies = self.graph.get_local_independencies() self.assertIsInstance(independencies, Independencies) self.assertEqual(independencies, Independencies(['a', 'c', 'b'])) def test_bayesian_model(self): self.graph.add_edges_from([('a', 'b'), ('b', 'c'), ('c', 'd'), ('d', 'a')]) phi1 = DiscreteFactor(['a', 'b'], [2, 3], np.random.rand(6)) phi2 = DiscreteFactor(['b', 'c'], [3, 4], np.random.rand(12)) phi3 = DiscreteFactor(['c', 'd'], [4, 5], np.random.rand(20)) phi4 = DiscreteFactor(['d', 'a'], [5, 2], np.random.random(10)) self.graph.add_factors(phi1, phi2, phi3, phi4) bm = self.graph.to_bayesian_model() self.assertIsInstance(bm, BayesianModel) self.assertListEqual(sorted(bm.nodes()), ['a', 'b', 'c', 'd']) self.assertTrue(nx.is_chordal(bm.to_undirected())) def tearDown(self): del self.graph
class TestUndirectedGraphFactorOperations(unittest.TestCase): def setUp(self): self.graph = MarkovModel() def test_add_factor_raises_error(self): self.graph.add_edges_from([('Alice', 'Bob'), ('Bob', 'Charles'), ('Charles', 'Debbie'), ('Debbie', 'Alice')]) factor = DiscreteFactor(['Alice', 'Bob', 'John'], [2, 2, 2], np.random.rand(8)) self.assertRaises(ValueError, self.graph.add_factors, factor) def test_add_single_factor(self): self.graph.add_nodes_from(['a', 'b', 'c']) phi = DiscreteFactor(['a', 'b'], [2, 2], range(4)) self.graph.add_factors(phi) six.assertCountEqual(self, self.graph.factors, [phi]) def test_add_multiple_factors(self): self.graph.add_nodes_from(['a', 'b', 'c']) phi1 = DiscreteFactor(['a', 'b'], [2, 2], range(4)) phi2 = DiscreteFactor(['b', 'c'], [2, 2], range(4)) self.graph.add_factors(phi1, phi2) six.assertCountEqual(self, self.graph.factors, [phi1, phi2]) def test_get_factors(self): self.graph.add_nodes_from(['a', 'b', 'c']) phi1 = DiscreteFactor(['a', 'b'], [2, 2], range(4)) phi2 = DiscreteFactor(['b', 'c'], [2, 2], range(4)) six.assertCountEqual(self, self.graph.get_factors(), []) self.graph.add_factors(phi1, phi2) six.assertCountEqual(self, self.graph.get_factors(), [phi1, phi2]) def test_remove_single_factor(self): self.graph.add_nodes_from(['a', 'b', 'c']) phi1 = DiscreteFactor(['a', 'b'], [2, 2], range(4)) phi2 = DiscreteFactor(['b', 'c'], [2, 2], range(4)) self.graph.add_factors(phi1, phi2) self.graph.remove_factors(phi1) six.assertCountEqual(self, self.graph.factors, [phi2]) def test_remove_multiple_factors(self): self.graph.add_nodes_from(['a', 'b', 'c']) phi1 = DiscreteFactor(['a', 'b'], [2, 2], range(4)) phi2 = DiscreteFactor(['b', 'c'], [2, 2], range(4)) self.graph.add_factors(phi1, phi2) self.graph.remove_factors(phi1, phi2) six.assertCountEqual(self, self.graph.factors, []) def test_partition_function(self): self.graph.add_nodes_from(['a', 'b', 'c']) phi1 = DiscreteFactor(['a', 'b'], [2, 2], range(4)) phi2 = DiscreteFactor(['b', 'c'], [2, 2], range(4)) self.graph.add_factors(phi1, phi2) self.graph.add_edges_from([('a', 'b'), ('b', 'c')]) self.assertEqual(self.graph.get_partition_function(), 22.0) def test_partition_function_raises_error(self): self.graph.add_nodes_from(['a', 'b', 'c', 'd']) phi1 = DiscreteFactor(['a', 'b'], [2, 2], range(4)) phi2 = DiscreteFactor(['b', 'c'], [2, 2], range(4)) self.graph.add_factors(phi1, phi2) self.assertRaises(ValueError, self.graph.get_partition_function) def tearDown(self): del self.graph