Example #1
0
def main_roman():
    (features, success_labels, yard_labels, progress_labels) = extract_features(2009, 2014)
    features, enc = encode_categorical_features(features, sparse=False)
    print enc.vocabulary_

    configurations = {'success':  {'labels': success_labels, 'target': 'success', 'regression': False},
                      'yards':    {'labels': yard_labels, 'target': 'yards', 'regression': True},
                      'progress': {'labels': progress_labels, 'target': 'progress', 'regression': True}}

    selected_configuration = 'progress'

    neural_network_prediction(features=features,
                              labels=configurations[selected_configuration]['labels'],
                              k=5,
                              team='all',
                              target_name=configurations[selected_configuration]['target'],
                              regression_task=configurations[selected_configuration]['regression'],
                              epochs        = [10],
                              hidden_layers = [1, 10],
                              hidden_units  = [10, 50, 100],
                              load_previous = True)
Example #2
0
def main_brendan():
    (features, labels, yards, progress) = extract_features(2009, 2014)
    #compare_RBF_parameters(features, labels)
    compute_regression_results(features,progress, "./regression_results_progress.txt")
    compute_regression_results(features,yards, "./regression_results_yards.txt")
Example #3
0
def main_valentin():
    (features, labels, _, _) = extract_features(2014, 2014)
    compare_RBF_parameters(features, labels)