Exemplo n.º 1
0
def process_node(node_i, level, loss, predictions, cur_lvl, top_k, alpha,
                 loss_type, w, debug, enumerator):
    cur_enum_nodes = []
    for node_j in level:
        if enumerator == "join":
            flag = approved_join_slice(node_i, node_j, cur_lvl)
        else:
            flag = approved_union_slice(node_i, node_j)
        if flag and int(node_i.name.split("&&")[0]) < int(
                node_j.name.split("&&")[0]):
            new_node = SparkNode(loss, predictions)
            parents_set = set(new_node.parents)
            parents_set.add(node_i)
            parents_set.add(node_j)
            new_node.parents = list(parents_set)
            parent1_attr = node_i.attributes
            parent2_attr = node_j.attributes
            new_node_attr = union(parent1_attr, parent2_attr)
            new_node.attributes = new_node_attr
            new_node.name = new_node.make_name()
            new_node.key = new_node.make_key()
            new_node.calc_bounds(cur_lvl, w)
            to_slice = new_node.check_bounds(top_k, len(predictions), alpha)
            if to_slice:
                new_node.process_slice(loss_type)
                new_node.score = opt_fun(new_node.loss, new_node.size, loss,
                                         len(predictions), w)
                if new_node.check_constraint(top_k, len(predictions), alpha):
                    cur_enum_nodes.append(new_node)
            if debug:
                new_node.print_debug(top_k, cur_lvl)
    return cur_enum_nodes
Exemplo n.º 2
0
def make_first_level(all_features, complete_x, loss, x_size, y_test, errors,
                     loss_type, w, alpha, top_k):
    all_nodes = {}
    counter = 0
    first_level = []
    for feature in all_features:
        new_node = Node(complete_x, loss, x_size, y_test, errors)
        new_node.parents = [(feature, counter)]
        new_node.attributes.append((feature, counter))
        new_node.name = new_node.make_name()
        new_id = len(all_nodes)
        new_node.key = new_node.make_key(new_id)
        all_nodes[new_node.key] = new_node
        new_node.process_slice(loss_type)
        # for first level nodes all bounds are strict as concrete metrics
        new_node.s_upper = new_node.size
        new_node.s_lower = 0
        new_node.e_upper = new_node.loss
        new_node.e_max_upper = new_node.e_max
        new_node.score = opt_fun(new_node.loss, new_node.size, loss, x_size, w)
        new_node.c_upper = new_node.score
        first_level.append(new_node)
        new_node.print_debug(top_k, 0)
        # constraints for 1st level nodes to be problematic candidates
        if new_node.score > 1 and new_node.size >= x_size / alpha:
            # this method updates top k slices if needed
            top_k.add_new_top_slice(new_node)
        counter = counter + 1
    return first_level, all_nodes
Exemplo n.º 3
0
def join_enum_fun(node_a, list_b, predictions, f_l2, debug, alpha, w,
                  loss_type, cur_lvl, top_k):
    x_size = len(predictions)
    nodes = []
    for node_i in range(len(list_b)):
        flag = spark_utils.approved_join_slice(node_i, node_a, cur_lvl)
        if not flag:
            new_node = SparkNode(predictions, f_l2)
            parents_set = set(new_node.parents)
            parents_set.add(node_i)
            parents_set.add(node_a)
            new_node.parents = list(parents_set)
            parent1_attr = node_a.attributes
            parent2_attr = list_b[node_i].attributes
            new_node_attr = union(parent1_attr, parent2_attr)
            new_node.attributes = new_node_attr
            new_node.name = new_node.make_name()
            new_node.calc_bounds(cur_lvl, w)
            # check if concrete data should be extracted or not (only for those that have score upper
            # and if size of subset is big enough
            to_slice = new_node.check_bounds(top_k, x_size, alpha)
            if to_slice:
                new_node.process_slice(loss_type)
                new_node.score = opt_fun(new_node.loss, new_node.size, f_l2,
                                         x_size, w)
                # we decide to add node to current level nodes (in order to make new combinations
                # on the next one or not basing on its score value
                if new_node.check_constraint(
                        top_k, x_size,
                        alpha) and new_node.key not in top_k.keys:
                    top_k.add_new_top_slice(new_node)
                nodes.append(new_node)
            if debug:
                new_node.print_debug(top_k, cur_lvl)
    return nodes
Exemplo n.º 4
0
def calc_bucket_metrics(bucket, loss, w, x_size, cur_lvl):
    bucket.calc_error()
    bucket.score = opt_fun(bucket.error, bucket.size, loss, x_size, w)
    if cur_lvl == 0:
        bucket.s_upper = bucket.size
        bucket.c_upper = bucket.score
        bucket.s_lower = 1
    return bucket
Exemplo n.º 5
0
def make_first_level(features, predictions, loss, top_k, w, loss_type):
    first_level = []
    # First level slices are enumerated in a "classic way" (getting data and not analyzing bounds
    for feature in features:
        new_node = SparkNode(loss, predictions)
        new_node.parents = [feature]
        new_node.attributes.append(feature)
        new_node.name = new_node.make_name()
        new_node.key = new_node.make_key()
        new_node.process_slice(loss_type)
        new_node.score = opt_fun(new_node.loss, new_node.size, loss,
                                 len(predictions), w)
        new_node.c_upper = new_node.score
        first_level.append(new_node)
        new_node.print_debug(top_k, 0)
    return first_level
Exemplo n.º 6
0
def make_first_level(features, predictions, f_l2, top_k, alpha, k, w,
                     loss_type):
    first_level = []
    # First level slices are enumerated in a "classic way" (getting data and not analyzing bounds
    for feature in features:
        new_node = SparkedNode(f_l2, predictions)
        new_node.parents = [feature]
        new_node.attributes.append(feature)
        new_node.name = new_node.make_name()
        new_node.key = new_node.make_key()
        new_node.process_slice(loss_type)
        new_node.score = opt_fun(new_node.loss, new_node.size, f_l2,
                                 len(predictions), w)
        new_node.c_upper = new_node.score
        first_level.append(new_node)
        new_node.print_debug(top_k, 0)
        # constraints for 1st level nodes to be problematic candidates
        if new_node.check_constraint(top_k, len(predictions), alpha):
            # this method updates top k slices if needed
            top_k.add_new_top_slice(new_node)
    return first_level
Exemplo n.º 7
0
def process(all_features, complete_x, loss, x_size, y_test, errors, debug,
            alpha, k, w, loss_type, b_update):
    top_k = Topk(k)
    # First level slices are enumerated in a "classic way" (getting data and not analyzing bounds
    levels = []
    first_level = make_first_level(all_features, complete_x, loss, x_size,
                                   y_test, errors, loss_type, w, alpha, top_k)
    # double appending of first level nodes in order to enumerating second level in the same way as others
    levels.append((first_level[0], len(all_features)))
    all_nodes = first_level[1]
    # cur_lvl - index of current level, correlates with number of slice forming features
    cur_lvl = 1  # level that is planned to be filled later
    cur_lvl_nodes = first_level
    # currently for debug
    print("Level 1 had " + str(len(all_features)) + " candidates")
    print()
    print("Current topk are: ")
    top_k.print_topk()
    # DPSize algorithm approach of previous levels nodes combinations and updating bounds for those that already exist
    while len(cur_lvl_nodes) > 0:
        cur_lvl_nodes = []
        count = 0
        for left in range(int(cur_lvl / 2) + 1):
            right = cur_lvl - 1 - left
            for node_i in range(len(levels[left][0])):
                for node_j in range(len(levels[right][0])):
                    flag = check_attributes(levels[left][0][node_i],
                                            levels[right][0][node_j])
                    if not flag:
                        new_node = Node(complete_x, loss, x_size, y_test,
                                        errors)
                        parents_set = set(new_node.parents)
                        parents_set.add(levels[left][0][node_i])
                        parents_set.add(levels[right][0][node_j])
                        new_node.parents = list(parents_set)
                        parent1_attr = levels[left][0][node_i].attributes
                        parent2_attr = levels[right][0][node_j].attributes
                        new_node_attr = union(parent1_attr, parent2_attr)
                        new_node.attributes = new_node_attr
                        new_node.name = new_node.make_name()
                        new_id = len(all_nodes)
                        new_node.key = new_node.make_key(new_id)
                        if new_node.key[1] in all_nodes:
                            existing_item = all_nodes[new_node.key[1]]
                            parents_set = set(existing_item.parents)
                            existing_item.parents = parents_set
                            if b_update:
                                s_upper = new_node.calc_s_upper(cur_lvl)
                                s_lower = new_node.calc_s_lower(cur_lvl)
                                e_upper = new_node.calc_e_upper()
                                e_max_upper = new_node.calc_e_max_upper(
                                    cur_lvl)
                                new_node.update_bounds(s_upper, s_lower,
                                                       e_upper, e_max_upper, w)
                        else:
                            new_node.calc_bounds(cur_lvl, w)
                            all_nodes[new_node.key[1]] = new_node
                            # check if concrete data should be extracted or not (only for those that have score upper
                            # big enough and if size of subset is big enough
                            to_slice = new_node.check_bounds(
                                top_k, x_size, alpha)
                            if to_slice:
                                new_node.process_slice(loss_type)
                                new_node.score = opt_fun(
                                    new_node.loss, new_node.size, loss, x_size,
                                    w)
                                # we decide to add node to current level nodes (in order to make new combinations
                                # on the next one or not basing on its score value
                                if new_node.check_constraint(
                                        top_k, x_size, alpha
                                ) and new_node.key not in top_k.keys:
                                    top_k.add_new_top_slice(new_node)
                                cur_lvl_nodes.append(new_node)
                            if debug:
                                new_node.print_debug(top_k, cur_lvl)
            count = count + levels[left][1] * levels[right][1]
        print("Level " + str(cur_lvl) + " had " + str(count) +
              " candidates but after pruning only " + str(len(cur_lvl_nodes)) +
              " go to the next level")
        cur_lvl = cur_lvl + 1
        levels.append((cur_lvl_nodes, count))
        top_k.print_topk()
    print("Program stopped at level " + str(cur_lvl))
    print()
    print("Selected slices are: ")
    top_k.print_topk()
Exemplo n.º 8
0
 def test_opt_fun(self):
     self.slice_member.score = slicer.opt_fun(self.slice_member.loss, self.slice_member.size, self.loss, len(self.x_test), self.w)
     print("check 8")