print(np.shape(ar_fulldata_input_xx))
Output: (9027, 1443)
Now I use Imputer
to impute the missing values of my dataframe ar_fulldata_input_xx
as follows.
fill_NaN = Imputer(missing_values=np.nan, strategy='mean', axis=0)
imputed_DF = pd.DataFrame(fill_NaN.fit_transform(ar_fulldata_input_xx))
Now I check the size of my imputed dataframe as follows.
print(np.shape(imputed_DF))
Output: (9027, 1442)
Why is the column size reduced by one?
Is there any way I can find which column is mixing after impute function??
I have run the following line of code to remove the all columns with entire "NAN" values or entire "0" values.
ar_fulldata_input_xx = ar_fulldata_input_xx.loc[:, (ar_fulldata_input_xx != 0).any(axis=0)]
and
ar_fulldata_input_xx=ar_fulldata_input_xx.dropna(axis=1, how='all')
interpolate
function instead:pd.DataFrame(ar_fulldata_input_xx).interpolate()