问题
After running a Variance Threshold from Scikit-Learn on a set of data, it removes a couple of features. I feel I'm doing something simple yet stupid, but I'd like to retain the names of the remaining features. The following code:
def VarianceThreshold_selector(data):
selector = VarianceThreshold(.5)
selector.fit(data)
selector = (pd.DataFrame(selector.transform(data)))
return selector
x = VarianceThreshold_selector(data)
print(x)
changes the following data (this is just a small subset of the rows):
Survived Pclass Sex Age SibSp Parch Nonsense
0 3 1 22 1 0 0
1 1 2 38 1 0 0
1 3 2 26 0 0 0
into this (again just a small subset of the rows)
0 1 2 3
0 3 22.0 1 0
1 1 38.0 1 0
2 3 26.0 0 0
Using the get_support method, I know that these are Pclass, Age, Sibsp, and Parch, so I'd rather this return something more like :
Pclass Age Sibsp Parch
0 3 22.0 1 0
1 1 38.0 1 0
2 3 26.0 0 0
Is there an easy way to do this? I'm very new with Scikit Learn, so I'm probably just doing something silly.
回答1:
Would something like this help? If you pass it a pandas dataframe, it will get the columns and use get_support
like you mentioned to iterate over the columns list by their indices to pull out only the column headers that met the variance threshold.
>>> df
Survived Pclass Sex Age SibSp Parch Nonsense
0 0 3 1 22 1 0 0
1 1 1 2 38 1 0 0
2 1 3 2 26 0 0 0
>>> from sklearn.feature_selection import VarianceThreshold
>>> def variance_threshold_selector(data, threshold=0.5):
selector = VarianceThreshold(threshold)
selector.fit(data)
return data[data.columns[selector.get_support(indices=True)]]
>>> variance_threshold_selector(df, 0.5)
Pclass Age
0 3 22
1 1 38
2 3 26
>>> variance_threshold_selector(df, 0.9)
Age
0 22
1 38
2 26
>>> variance_threshold_selector(df, 0.1)
Survived Pclass Sex Age SibSp
0 0 3 1 22 1
1 1 1 2 38 1
2 1 3 2 26 0
回答2:
I came here looking for a way to get transform()
or fit_transform()
to return a data frame, but I suspect it's not supported.
However, you can subset the data a bit more cleanly like this:
data_transformed = data.loc[:, selector.get_support()]
回答3:
There's probably better ways to do this, but for those interested here's how I did:
def VarianceThreshold_selector(data):
#Select Model
selector = VarianceThreshold(0) #Defaults to 0.0, e.g. only remove features with the same value in all samples
#Fit the Model
selector.fit(data)
features = selector.get_support(indices = True) #returns an array of integers corresponding to nonremoved features
features = [column for column in data[features]] #Array of all nonremoved features' names
#Format and Return
selector = pd.DataFrame(selector.transform(data))
selector.columns = features
return selector
回答4:
As I had some problems with the function by Jarad, I have mixed it up with the solution by pteehan, which I found is more reliable. I also added NA replacement as a standard as VarianceThreshold does not like NA values.
def variance_threshold_select(df, thresh=0.0, na_replacement=-999):
df1 = df.copy(deep=True) # Make a deep copy of the dataframe
selector = VarianceThreshold(thresh)
selector.fit(df1.fillna(na_replacement)) # Fill NA values as VarianceThreshold cannot deal with those
df2 = df.loc[:,selector.get_support(indices=False)] # Get new dataframe with columns deleted that have NA values
return df2
回答5:
You can use Pandas for thresholding too
data_new = data.loc[:, data.std(axis=0) > 0.75]
来源:https://stackoverflow.com/questions/39812885/retain-feature-names-after-scikit-feature-selection