On a fresh installation of Anaconda under Ubuntu... I am preprocessing my data in various ways prior to a classification task using Scikit-Learn.
from sklearn import preprocessing scaler = preprocessing.MinMaxScaler().fit(train) train = scaler.transform(train) test = scaler.transform(test)
This all works fine but if I have a new sample (temp below) that I want to classify (and thus I want to preprocess in the same way then I get
temp = [1,2,3,4,5,5,6,....................,7] temp = scaler.transform(temp)
Then I get a deprecation warning...
DeprecationWarning: Passing 1d arrays as data is deprecated in 0.17 and will raise ValueError in 0.19. Reshape your data either using X.reshape(-1, 1) if your data has a single feature or X.reshape(1, -1) if it contains a single sample.
So the question is how should I be rescaling a single sample like this?
I suppose an alternative (not very good one) would be...
temp = [temp, temp] temp = scaler.transform(temp) temp = temp
But I'm sure there are better ways.