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sklearn.preprocessing.StandardScaler 離線使用 不使用pickle如何做

ear ati transform tor nsf ble ESS cal ons

Having said that, you can query sklearn.preprocessing.StandardScaler for the fit parameters:

scale_ : ndarray, shape (n_features,) Per feature relative scaling of the data. New in version 0.17: scale_ is recommended instead of deprecated std_. mean_ : array of floats with shape [n_features] The mean value for each feature in the training set.

The following short snippet illustrates this:

from sklearn import preprocessing
import numpy as np

s = preprocessing.StandardScaler()
s.fit(np.array([[1., 2, 3, 4]]).T)
>>> s.mean_, s.scale_
(array([ 2.5]), array([ 1.11803399]))


參考:https://stackoverflow.com/questions/35944783/how-to-store-scaling-parameters-for-later-use

解法:
>>> from sklearn import preprocessing
>>> import numpy as np
>>> 
>>> s = preprocessing.StandardScaler()
>>> s.fit(np.array([[1., 2, 3, 4]]).T)
StandardScaler(copy=True, with_mean=True, with_std=True)
>>> s.mean_, s.scale_
(array([2.5]), array([1.11803399]))
>>> s.transform(np.array([[1., 2, 3, 4]]).T)
array([[-1.34164079],
       [-0.4472136 ],
       [ 0.4472136 ],
       [ 1.34164079]])
>>> (1-s.mean_)/s.scale_
array([-1.34164079])
>>> a=np.array([1,2,3])
>>> b=np.array([1,2,3])
>>> a==b
array([ True,  True,  True])

(np.array([1., 2, 3, 4])-s.mean_)/s.scale_
array([-1.34164079, -0.4472136 , 0.4472136 , 1.34164079]) 和transform效果一樣。

可以看到,離線使用StandardScaler時,只需要s.mean_, s.scale_這兩個關鍵參數即可!

sklearn.preprocessing.StandardScaler 離線使用 不使用pickle如何做