예제 #1
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def main(train_file, user_sideinformation_file, test_file, normalize):
    A = tsv_to_matrix(train_file)
    B = tsv_to_matrix(user_sideinformation_file)

    if normalize:
        B = normalize_values(B)

    A, B = make_compatible(A, B)

    W = sslim_train(A, B)

    recommendations = slim_recommender(A, W)

    return compute_precision(recommendations, test_file)
예제 #2
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def main(train_file, user_sideinformation_file, test_file, normalize):
    A = tsv_to_matrix(train_file)
    B = tsv_to_matrix(user_sideinformation_file)

    if normalize:
        B = normalize_values(B)

    A, B = make_compatible(A, B)

    W = sslim_train(A, B)

    save_matrix(W, 'sslim_oracle_wmatrix.tsv')
    recommendations = slim_recommender(A, W)

    precisions = compute_precision_as_an_oracle(recommendations, test_file)

    return precisions
예제 #3
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def main(train_file, user_sideinformation_file, test_file, normalize):
    A = tsv_to_matrix(train_file)
    B = tsv_to_matrix(user_sideinformation_file)

    if normalize:
        B = normalize_values(B)

    A, B = make_compatible(A, B)

    W = sslim_train(A, B)

    save_matrix(W, 'sslim_oracle_wmatrix.tsv')
    recommendations = slim_recommender(A, W)

    precisions = compute_precision_as_an_oracle(recommendations, test_file)

    return precisions
예제 #4
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def main(train_file, user_sideinformation_file, test_file):
    A = tsv_to_matrix(train_file)
    B = tsv_to_matrix(user_sideinformation_file)

    A, B = make_compatible(A, B)
    """
    from util import mm2csr
    mm2csr(A, '/tmp/train.mat')
    mm2csr(useritem_featureitem, '/tmp/train_feature.mat')
    C = tsv_to_matrix(test_file)
    mm2csr(C, '/tmp/test.mat')
    """

    W = sslim_train(A, B)

    recommendations = slim_recommender(A, W)

    compute_precision(recommendations, test_file)
예제 #5
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def main(train_file, user_sideinformation_file, test_file):
    A = tsv_to_matrix(train_file)
    B = tsv_to_matrix(user_sideinformation_file)

    A, B = make_compatible(A, B)
    """
    from util import mm2csr
    mm2csr(A, '/tmp/train.mat')
    mm2csr(useritem_featureitem, '/tmp/train_feature.mat')
    C = tsv_to_matrix(test_file)
    mm2csr(C, '/tmp/test.mat')
    """

    W = sslim_train(A, B)

    recommendations = slim_recommender(A, W)

    compute_precision(recommendations, test_file)
예제 #6
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train_file = args.train
user_sideinformation_file = args.side_information
output = args.output
test_file = args.test
beta = args.beta or 0.011
normalize = args.normalize
fold = args.fold or 0

# Loading matrices
A = tsv_to_matrix(train_file)
B = tsv_to_matrix(user_sideinformation_file)

if normalize:
    B = normalize_values(B)

A, B = make_compatible(A, B)

# Loading shared array to be used in results
shared_array_base = multiprocessing.Array(ctypes.c_double, A.shape[1]**2)
shared_array = np.ctypeslib.as_array(shared_array_base.get_obj())
shared_array = shared_array.reshape(A.shape[1], A.shape[1])

# We create a work function to fit each one of the columns of our W matrix,
# because in SLIM each column is independent we can use make this work in
# parallel
def work(params, W=shared_array):
    from_j = params[0]
    to_j = params[1]
    M = params[2]
    model = params[3]
    counter = 0
예제 #7
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import datetime
from util import parse_args
import simplejson as json

print '>>> Start: %s' % datetime.datetime.now()

args = parse_args(side_information=True, beta=True)

# Loading matrices
A = tsv_to_matrix(args.train)
B = tsv_to_matrix(args.side_information)

if args.normalize:
    B = normalize_values(B)

A, B = make_compatible(A, B)

# Loading shared array to be used in results
shared_array_base = multiprocessing.Array(ctypes.c_double, A.shape[1]**2)
shared_array = np.ctypeslib.as_array(shared_array_base.get_obj())
shared_array = shared_array.reshape(A.shape[1], A.shape[1])


# We create a work function to fit each one of the columns of our W matrix,
# because in SLIM each column is independent we can use make this work in
# parallel
def work(params, W=shared_array):
    from_j = params[0]
    to_j = params[1]
    M = params[2]
    model = params[3]