I am trying to train a RandomForestClassifier with a custom scorer whose output needs to be dependent on one of the features.

The X dataset contains 18 features: X dataset

The y is the usual array of 0s and 1s: y_true

The RandomForestClassifier with custom scorer is used within a GridSearchCV instance: GridSearchCV(classifier, param_grid=[...], scoring=custom_scorer).

Custom scorer is defined via Scikit-learn function make_scorer: custom_scorer = make_scorer(custom_scorer_function, greater_is_better=True).

This framework is very straightforward if the custom_scorer_function is dependent only on y_true and y_pred. However in my case I need to define a scorer which makes use of one of the 18 features contained in the X dataset, i.e. depending on the values of y_pred and y_true the custom score will be a combination of them and the feature.

My question is how can I pass the feature into the custom_scorer_function given that its standard signature accepts y_true and y_pred?

I am aware it accepts extra **kwargs, but passing the entire feature array in this way doesn't solve the problem as this function is invoked for each couple of y_true and y_pred values (would need to extract the individual feature value corresponding to them to make this working, which I am not sure can be done).

I have tried to augment the y_true array packing that feature into it and unpacking it within the custom_scorer_function (1st column are the actual labels, 2nd columns are the feature values I need to calculate the custom scores): y_true_augmented

However doing so violates the requirements of the classifier of having a 1D labels array and triggers the following error.

ValueError: Unknown label type: 'continuous-multioutput'

Any help is much appreciated.

Thank you.

  • 1
    i am not sure why you want to pass it features....you can use weight or features importance to affect the score..\ – Eliethesaiyan Mar 13 '18 at 1:50
  • Th problem is that the score uses the feature value I want to pass depending on the y_true and y_pred values, i.e. there will be 4 potential score values according to the cases y_true = y_pred = 0, y_true = 0 and y_pred = 1 and so on.... – ClaudioN Mar 13 '18 at 13:36
  • 1
    you should post your code first, second,you can define features as global variable and access them in custom_score function – Eliethesaiyan Mar 14 '18 at 2:32
  • As @Eliethesaiyan says, just reference our global features data in the custom scorer. The order of the features and the labels should match, – Ken Syme Mar 14 '18 at 12:55
  • @Eliethesaiyan,@Ken Syme Passing the feature data as a global variable wouldn't work. In fact the custom_scorer function general signature is: def custom_scorer(y_true, y_pred, **kwargs). During training this gets invoked with y_true and y_pred (both scalars at each training step) to produce a score value. If I pass my feature data (let's say X[:, 10]) into the custom_scorer function as extra arg, this will be seen as an array within each training step. This would work if your custom score is something like (y_true - y_pred) * max(X[:, 10]), but that is not what I am after. – ClaudioN Mar 15 '18 at 0:36

You can do something like this (note you have given no real code so this is barebones)

X = [...]
y = [...]

def custom_scorer_function(y, y_pred, **kwargs):
   a_feature = X[:,1]
   # now have y, y_pred and the feature you want

custom_scorer = make_scorer(custom_scorer_function, greater_is_better=True)
  • This would not solve it. According to your code, in fact, at each training step (each call of the scorer) you will have a "scalar" y, a "scalar" y_pred and an "array" a_feature. That would work only if the custom score you want, as I said, depends on a global statistics of a_feature (for example (y - y_pred) * max(a_feature)). How would you pick "at each training step" the value from a_feature actually corresponding to the "scalar" y and the"scalar" y_pred? – ClaudioN Mar 15 '18 at 10:53
  • @ClaudioN Are y and y_pred not arrays also when calling the scorer? – Ken Syme Mar 15 '18 at 11:13
  • No! That's exactly the problem. The custom scorer is called behind the scene and at each step handles a couple of scalar values (Y-true and y_pred). I need to pass it also the scalar value taken from X[:, 10] that corresponds to those scalar, i.e. X[row, 10] where row is the index such that y_true = y[row]. – ClaudioN Mar 15 '18 at 11:33
  • Sorry, my understanding of scorers is they take the full array of train/test data so trying to work out where the scalers are coming from. What do you get when the only thing your custom scorer does is print(y) and print(y_pred)? – Ken Syme Mar 15 '18 at 11:49
  • I did that. Got an error (obviously not a real scorer) but I actually got 2 arrays printed in the console so you might be right after all! Thanks for the heads up. I then passed the feature array into the custom scorer function as part of **kwargs and GridSearchCV seemed to proceed fine. However I got very weird values as gs.score(testX, testY), where gs is the GridSearchCV object and testX and testY represent the test datasets. Not sure the scorer is behaving as expected, but surely a step ahead! – ClaudioN Mar 16 '18 at 0:31

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