def test_full_problem(): graph = make_toy_graph() banned_values = set([frozenset(['h'])]) heuristic = make_heuristic(banned_values, greed=10) initial_bindings = { 'x': set(['x']), 'y': set(['y']), } initial_expr = E.prob([E.v('y')], [E.do(E.v('x'))]) initial_proof_state = ProofState( length=0, # length of proof heuristic_length=0, bindings=initial_bindings, root_expr=initial_expr, ).normalise() initial_proof_state = initial_proof_state.copy( heuristic_length=heuristic(initial_proof_state)) def goal_check(proof_state): return proof_state.heuristic_length == 0 result = proof_search(initial_proof_state, graph, goal_check, heuristic, max_proof_length=7) assert result['reached_goal']
def test_full_problem(): graph = make_toy_graph() banned_values = set([frozenset(['h'])]) heuristic = make_heuristic(banned_values, greed=10) initial_bindings = { 'x' : set(['x']), 'y' : set(['y']), } initial_expr = E.prob([E.v('y')], [E.do(E.v('x'))]) initial_proof_state = ProofState( length = 0, # length of proof heuristic_length = 0, bindings = initial_bindings, root_expr = initial_expr, ).normalise() initial_proof_state = initial_proof_state.copy(heuristic_length=heuristic(initial_proof_state)) def goal_check(proof_state): return proof_state.heuristic_length == 0 result = proof_search(initial_proof_state, graph, goal_check, heuristic, max_proof_length=7) assert result['reached_goal']
def main(): if len(sys.argv) != 2: sys.stderr.write('usage: greediness (positive float...)\n') sys.exit(1) greed = float(sys.argv[1]) graph = make_toy_graph() banned_values = set([frozenset(['h'])]) # dial the greed parameter up high. # this makes the search very optimistic. # in general this may not find the shortest proof heuristic = make_heuristic(banned_values, greed) initial_bindings = { 'x': frozenset(['x']), 'y': frozenset(['y']), } initial_expr = E.prob([E.v('y')], [E.do(E.v('x'))]) initial_proof_state = ProofState( length=0, # length of proof heuristic_length=0, bindings=initial_bindings, root_expr=initial_expr, parent=None, comment='initial state', ).normalise() # this is a little silly initial_proof_state = initial_proof_state.copy( heuristic_length=heuristic(initial_proof_state)) def goal_check(proof_state): return proof_state.heuristic_length == 0 result = proof_search(initial_proof_state, graph, goal_check, heuristic, max_proof_length=7) assert result['reached_goal'] print 'success!' display_proof_as_listing(result['path']) out_file_name = 'proof_tree.dot' write_proof_tree(result['path'], result['closed'], out_file_name)
def test_normalise_fixed_point(): root_expr = sigma(v('x'), product([prob([v('z'), v('y')], [v('b'), v('x'), do(v('a'))]), prob([v('z'), v('y'), v('x')], [do(v('a'))])])) bindings = {'x' : 'xxx', 'z' : 'zzz', 'y' : 'yyy', 'a' : 'aaa'} state = ProofState(0, 0, bindings, root_expr) normalised_state = state.normalise() expected_result = sigma(v(0), product((prob((v(0), v(1), v(2)),(do(v(3)), )), prob((v(1), v(2)), (do(v(3)), v(0), v(4)))))) assert normalised_state.root_expr == expected_result
def gen_expansions(value, proof_state): for (prob_expr, inject) in E.gen_matches(E.is_prob, proof_state.root_expr): prob_vars = get_variable_order(prob_expr) prob_values = [proof_state.bindings[v] for v in prob_vars] if value in prob_values: continue # prob([x],[w]) -> sigma(y, product([prob([x], [y, w]), p([y], [w])])) i = new_variable_name(proof_state.bindings) v_i = E.v(i) alpha_left = tuple(prob_expr[1]) alpha_right = (v_i, ) + tuple(prob_expr[2]) alpha = E.prob(alpha_left, alpha_right) beta_left = (v_i, ) beta_right = tuple(prob_expr[2]) beta = E.prob(beta_left, beta_right) expr_prime = E.sigma(v_i, E.product([alpha, beta])) succ_length = proof_state.length + 1 succ_heuristic = 0 succ_bindings = dict(proof_state.bindings) succ_bindings[i] = value succ_root_expr = inject(expr_prime) succ_comment = 'conditioned %s on %s' % ( pleasantly_fmt(proof_state.bindings, prob_expr), make_canonical_variable_name(value)) succ_proof_state = ProofState(succ_length, succ_heuristic, succ_bindings, succ_root_expr, parent=proof_state, comment=succ_comment) yield succ_proof_state
def main(): if len(sys.argv) != 2: sys.stderr.write('usage: greediness (positive float...)\n') sys.exit(1) greed = float(sys.argv[1]) graph = make_toy_graph() banned_values = set([frozenset(['h'])]) # dial the greed parameter up high. # this makes the search very optimistic. # in general this may not find the shortest proof heuristic = make_heuristic(banned_values, greed) initial_bindings = { 'x' : frozenset(['x']), 'y' : frozenset(['y']), } initial_expr = E.prob([E.v('y')], [E.do(E.v('x'))]) initial_proof_state = ProofState( length = 0, # length of proof heuristic_length = 0, bindings = initial_bindings, root_expr = initial_expr, parent = None, comment = 'initial state', ).normalise() # this is a little silly initial_proof_state = initial_proof_state.copy(heuristic_length=heuristic(initial_proof_state)) def goal_check(proof_state): return proof_state.heuristic_length == 0 result = proof_search(initial_proof_state, graph, goal_check, heuristic, max_proof_length=7) assert result['reached_goal'] print 'success!' display_proof_as_listing(result['path']) out_file_name = 'proof_tree.dot' write_proof_tree(result['path'], result['closed'], out_file_name)
def test_normalise_single_iter(): root_expr = sigma(v('x'), product([prob([v('z'), v('y')], [v('b'), v('x'), do(v('a'))]), prob([v('z'), v('y'), v('x')], [do(v('a'))])])) bindings = {'x' : 'xxx', 'z' : 'zzz', 'y' : 'yyy', 'a' : 'aaa'} state = ProofState(0, 0, bindings, root_expr) normalised_state = state.normalise(max_iters=1) # first up: expression ordering (nb do(v()) comes before v() in sorted lists) # sigma(x, product([prob([x y z],[do(a)]), prob([y z], [(do a) b x])])) # so, variable order should be: # x y z a b # so, new variable names should be # 0 1 2 3 4 # so, normalised state should be # sigma(0, product([prob([0 1 2],[do(3)]), prob([1 2], [(do 3) 4 0])])) expected_result = sigma(v(0), product((prob((v(0), v(1), v(2)),(do(v(3)), )), prob((v(1), v(2)), (do(v(3)), v(4), v(0)))))) assert normalised_state.root_expr == expected_result
def gen_causal_rule_moves(rules, proof_state, graph): def bind(name): return proof_state.bindings[name] for rule in rules: for site in rule['site_gen'](proof_state.root_expr): prepped_args = prepare_rule_arguments(rule['unpack_target'], site) bound_args = bind_arguments(bind, prepped_args) if not rule['assumption_test'](g = graph, **bound_args): continue succ_length = proof_state.length + 1 succ_heuristic = 0 succ_bindings = dict(proof_state.bindings) succ_root_expr = rule['apply'](site) original_expr = site[-1] succ_comment = 'applied rule %s to %s' % ( rule['name'], pleasantly_fmt(proof_state.bindings, original_expr)) succ_proof_state = ProofState(succ_length, succ_heuristic, succ_bindings, succ_root_expr, parent=proof_state, comment=succ_comment) yield succ_proof_state