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Permits having the same result when running
the same experiment twice.

Follows recommendation given at
#19

Permits having the same result when running
the same experiment twice.

Follows recommendation given at
coreylynch#19
@yetanotherion
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Tested with

from pyfm import pylibfm
from sklearn.feature_extraction import DictVectorizer
import numpy as np

def test_reproducible():
    train = [
    {"user": "1", "item": "5", "age": 19},
    {"user": "2", "item": "43", "age": 33},
    {"user": "3", "item": "20", "age": 55},
    {"user": "4", "item": "10", "age": 20},
    ]
    v = DictVectorizer()
    X = v.fit_transform(train)
    y = np.repeat(1.0,X.shape[0])
    fm = pylibfm.FM(seed=42)
    fm.fit(X,y)
    pred = fm.predict(v.transform({"user": "1", "item": "10", "age": 24}))[0]
    expected = 0.99148472
    diff = abs(pred - expected)
    assert diff < 10 ** -6

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