数据归一化处理

2017-12-18  本文已影响0人  蒜苗爱妞妞
data = np.array(
            [[-0.017612, 14.053064],
             [-1.395634, 1.662541],
             [-0.752157, 6.538620],
             [-1.322371, 7.152853],
             [0.423363, 11.054677],
             [0.406704, 7.067335],
             [0.667394, 12.741452],
             [-2.460150, -0.866805],
             [0.569411, 9.548755],
             [-0.026632, 10.427743]], dtype=float)
label = np.array([0, 1, 0, 0, 0, 1, 0, 1, 0, 0])
target = [2.0, 1.0]
scaler = scale(data)
print(scaler.mean(axis=0), scaler.std(axis=0))

<<output>>:[0 0] [1 1]
scaler = StandardScaler().fit(data)
print(scaler.mean_,scaler.var_)
data = scaler.transform(data)
target = scaler.transform([target])

<<output>>:[-0.3907684  7.9380235]
 [0.99028455  19.92129407]
scaler = minmax_scale(data,feature_range=(0,1))
print(scaler.mean(axis=0), scaler.std(axis=0))

<<output>>:[ 0.66166347,  0.59014114], 
[0.31818271,  0.29915328]
mm = MinMaxScaler()
scaler = mm.fit_transform(data)
target = mm.transform([target])[0]
print(mm.min_,mm.scale_)

<<output>>:[ 0.78660764,  0.05809736]
[ 0.31973971,  0.06702472]
target = [2.0, 1.0]
scalar = normalize(data, norm='l2')
scalar = Normalizer().fit(data)
data = scalar.transform(data)
target = scalar.transform([target])[0]
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