# Avoid scaling binary columns in sci-kit learn StandsardScaler

I'm building a linear regression model in sci-kit learn, and am scaling the inputs as a preprocessing step in a sci-kit learn Pipeline. Is there any way I can avoid scaling binary columns? What's happening is that these columns are being scaled with every other column, causing the values to be centered around 0, rather than being 0 or 1, so I'm getting values like [-0.6, 0.3], which cause input values of 0 to influence predictions in my linear model.

Basic code to illustrate:

``````>>> import numpy as np
>>> from sklearn.pipeline import Pipeline
>>> from sklearn.preprocessing import StandardScaler
>>> from sklearn.linear_model import Ridge
>>> X = np.hstack( (np.random.random((1000, 2)),
np.random.randint(2, size=(1000, 2))) )
>>> X
array([[ 0.30314072,  0.22981496,  1.        ,  1.        ],
[ 0.08373292,  0.66170678,  1.        ,  0.        ],
[ 0.76279599,  0.36658793,  1.        ,  0.        ],
...,
[ 0.81517519,  0.40227095,  0.        ,  0.        ],
[ 0.21244587,  0.34141014,  0.        ,  0.        ],
[ 0.2328417 ,  0.14119217,  0.        ,  0.        ]])
>>> scaler = StandardScaler()
>>> scaler.fit_transform(X)
array([[-0.67768374, -0.95108883,  1.00803226,  1.03667198],
[-1.43378124,  0.53576375,  1.00803226, -0.96462528],
[ 0.90632643, -0.48022732,  1.00803226, -0.96462528],
...,
[ 1.08682952, -0.35738315, -0.99203175, -0.96462528],
[-0.99022572, -0.56690563, -0.99203175, -0.96462528],
[-0.91994001, -1.25618613, -0.99203175, -0.96462528]])
``````

I'd love for the output of the last line to be:

``````>>> scaler.fit_transform(X, dont_scale_binary_or_something=True)
array([[-0.67768374, -0.95108883,  1.        ,  1.        ],
[-1.43378124,  0.53576375,  1.        ,  0.        ],
[ 0.90632643, -0.48022732,  1.        ,  0.        ],
...,
[ 1.08682952, -0.35738315,  0.        ,  0.        ],
[-0.99022572, -0.56690563,  0.        ,  0.        ],
[-0.91994001, -1.25618613,  0.        ,  0.        ]])
``````

Any way I can accomplish this? I suppose I could just select the columns that aren't binary, only transform those, then replace the transformed values back into the array, but I'd like it to play nicely with the sci-kit learn Pipeline workflow, so I can just do something like:

``````clf = Pipeline([('scaler', StandardScaler()), ('ridge', Ridge())])
clf.set_params(scaler__dont_scale_binary_features=True, ridge__alpha=0.04).fit(X, y)
``````

## 6 Answers

You should create a custom scaler which ignores the last two columns while scaling.

``````from sklearn.base import TransformerMixin
import numpy as np

class CustomScaler(TransformerMixin):
def __init__(self):
self.scaler = StandardScaler()

def fit(self, X, y):
self.scaler.fit(X[:, :-2], y)
return self

def transform(self, X):
X_head = self.scaler.transform(X[:, :-2])
return np.concatenate(X_head, X[:, -2:], axis=1)
``````

I'm posting code that I adapted from @miindlek's response just in case it is helpful to others. I encountered an error when I didn't include BaseEstimator. Thank you again @miindlek. Below, bin_vars_index is an array of column indexes for the binary variable and cont_vars_index is the same for the continuous variables that you want to scale.

``````from sklearn.preprocessing import StandardScaler
from sklearn.base import BaseEstimator, TransformerMixin
import numpy as np

class CustomScaler(BaseEstimator,TransformerMixin):
# note: returns the feature matrix with the binary columns ordered first
def __init__(self,bin_vars_index,cont_vars_index,copy=True,with_mean=True,with_std=True):
self.scaler = StandardScaler(copy,with_mean,with_std)
self.bin_vars_index = bin_vars_index
self.cont_vars_index = cont_vars_index

def fit(self, X, y=None):
self.scaler.fit(X[:,self.cont_vars_index], y)
return self

def transform(self, X, y=None, copy=None):
X_tail = self.scaler.transform(X[:,self.cont_vars_index],y,copy)
return np.concatenate((X[:,self.bin_vars_index],X_tail), axis=1)
``````

I have adapted @J_C code a bit to work with pandas data frame. You can pass column names that you want to scale and you get result with initial column order.

``````enter code here
from sklearn.preprocessing import StandardScaler
from sklearn.base import BaseEstimator, TransformerMixin
import pandas as pd

class CustomScaler(BaseEstimator,TransformerMixin):
def __init__(self,columns,copy=True,with_mean=True,with_std=True):
self.scaler = StandardScaler(copy,with_mean,with_std)
self.columns = columns

def fit(self, X, y=None):
self.scaler.fit(X[self.columns], y)
return self

def transform(self, X, y=None, copy=None):
init_col_order = X.columns
X_scaled = pd.DataFrame(self.scaler.transform(X[self.columns]), columns=self.columns)
X_not_scaled = X.ix[:,~X.columns.isin(self.columns)]
return pd.concat([X_not_scaled, X_scaled], axis=1)[init_col_order]
``````

Usage:

``````scale = CustomScaler(columns=['duration', 'num_operations'])
scaled = scale.fit_transform(churn_d)
``````

Your pipeline should change into:

``````from sklearn.preprocessing import StandardScaler,FunctionTransformer
from sklearn.pipeline import Pipeline,FeatureUnion

pipeline=Pipeline(steps= [
('feature_processing', FeatureUnion(transformer_list = [
('categorical', FunctionTransformer(lambda data: data[:, cat_indices])),

#numeric
('numeric', Pipeline(steps = [
('select', FunctionTransformer(lambda data: data[:, num_indices])),
('scale', StandardScaler())
]))
])),
('clf', Ridge())
]
)
``````

I found the concatenation in @Vitaliy Grabovets dataframe version doesn't work properly unless you specify the index for X_scaled. So the relevant line now reads:

``````X_scaled = pd.DataFrame(self.scaler.transform(X[self.columns]), columns=self.columns, index=X.index)
``````

This probably makes it easier for you

``````    import pandas as pd
import numpy as np

X = np.hstack((np.random.random((1000, 2)),np.random.randint(2, size=        (1000, 2))))

df=pd.DataFrame(X,columns=["num_1","num_2","binary_1","binary_2"])

from sklearn.pipeline import Pipeline
from sklearn.compose import ColumnTransformer
from sklearn.preprocessing import OneHotEncoder

num_pipeline = Pipeline([
('std_scaler', StandardScaler()),
])

num_attribs=["num_1","num_2"]
binary_attribs=["binary_1","binary_2"]

full_pipeline = ColumnTransformer([
("num_cols", num_pipeline, num_attribs),
("binary_cols",OneHotEncoder(drop="first"),binary_attribs),
])

full_pipeline.fit_transform(df)
``````