Пример #1
0
def dt_fit(input_dict):
    from discomll.ensemble import forest_distributed_decision_trees

    random_state = None if input_dict["seed"] == "None" else int(input_dict["seed"])

    fitmodel_url = forest_distributed_decision_trees.fit(input_dict["dataset"],
                                                         trees_per_chunk=input_dict["trees_per_subset"],
                                                         max_tree_nodes=input_dict["tree_nodes"],
                                                         min_samples_leaf=input_dict["min_samples_leaf"],
                                                         min_samples_split=input_dict["min_samples_split"],
                                                         class_majority=input_dict["majority"],
                                                         bootstrap=input_dict["bootstrap"] == "true",
                                                         measure=input_dict["measure"],
                                                         accuracy=input_dict["accuracy"],
                                                         separate_max=input_dict["separate_max"] == "true",
                                                         random_state=random_state,
                                                         save_results=True)
    return {"fitmodel_url": fitmodel_url}
Пример #2
0
def dt_fit(input_dict):
    from discomll.ensemble import forest_distributed_decision_trees

    random_state = None if input_dict["seed"] == "None" else int(
        input_dict["seed"])

    fitmodel_url = forest_distributed_decision_trees.fit(
        input_dict["dataset"],
        trees_per_chunk=input_dict["trees_per_subset"],
        max_tree_nodes=input_dict["tree_nodes"],
        min_samples_leaf=input_dict["min_samples_leaf"],
        min_samples_split=input_dict["min_samples_split"],
        class_majority=input_dict["majority"],
        bootstrap=input_dict["bootstrap"] == "true",
        measure=input_dict["measure"],
        accuracy=input_dict["accuracy"],
        separate_max=input_dict["separate_max"] == "true",
        random_state=random_state,
        save_results=True)
    return {"fitmodel_url": fitmodel_url}
Пример #3
0
from discomll import dataset
from discomll.ensemble import forest_distributed_decision_trees

train = dataset.Data(data_tag=["http://ropot.ijs.si/data/segmentation/train/xaaaaa.gz",
                               "http://ropot.ijs.si/data/segmentation/train/xaaabj.gz"],
                     data_type="gzip",
                     generate_urls=True,
                     X_indices=range(2, 21),
                     id_index=0,
                     y_index=1,
                     X_meta=["c" for i in range(2, 21)],
                     delimiter=",")

test = dataset.Data(data_tag=["http://ropot.ijs.si/data/segmentation/test/xaaaaa.gz",
                              "http://ropot.ijs.si/data/segmentation/test/xaaabj.gz"],
                    data_type="gzip",
                    generate_urls=True,
                    X_indices=range(2, 21),
                    id_index=0,
                    y_index=1,
                    X_meta=["c" for i in range(2, 21)],
                    delimiter=",")

fit_model = forest_distributed_decision_trees.fit(train, trees_per_chunk=1, bootstrap=True, max_tree_nodes=50,
                                                  min_samples_leaf=10, min_samples_split=5, class_majority=1,
                                                  separate_max=True, measure="info_gain", accuracy=1, random_state=None,
                                                  save_results=True)
predict_url = forest_distributed_decision_trees.predict(test, fit_model)
print predict_url
Пример #4
0
                     y_index=1,
                     X_meta=["c" for i in range(2, 21)],
                     delimiter=",")

test = dataset.Data(data_tag=[
    "http://ropot.ijs.si/data/segmentation/test/xaaaaa.gz",
    "http://ropot.ijs.si/data/segmentation/test/xaaabj.gz"
],
                    data_type="gzip",
                    generate_urls=True,
                    X_indices=range(2, 21),
                    id_index=0,
                    y_index=1,
                    X_meta=["c" for i in range(2, 21)],
                    delimiter=",")

fit_model = forest_distributed_decision_trees.fit(train,
                                                  trees_per_chunk=1,
                                                  bootstrap=True,
                                                  max_tree_nodes=50,
                                                  min_samples_leaf=10,
                                                  min_samples_split=5,
                                                  class_majority=1,
                                                  separate_max=True,
                                                  measure="info_gain",
                                                  accuracy=1,
                                                  random_state=None,
                                                  save_results=True)
predict_url = forest_distributed_decision_trees.predict(test, fit_model)
print predict_url