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How can I customise loss functions in scikit learn? For example, instead of using mean square error, I want to use MSE multiplied by the true value of the sample. I have used the following code snippet:

def my_custom_loss_func(y_true,y_pred):
    diff3=(abs(y_true-y_pred))*y_true
    return diff3

clf=RandomForestRegressor(criterion=my_custom_loss_func)
knn=clf.fit(feam,labm)

I get the following error:

KeyError: <function my_custom_loss_func at 0x000000002EA9CA60>
  • @franco piccolo what should be the arguments passed to the my_custom_loss_func? Are y_pred and y_true predefined in scikit learn? My label matrix is labm. If I use labm instead of y_true, what should I use instead of y_pred? – Moonzarin Esha Jan 19 '19 at 12:27
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You can customize loss functions in scikit learn, for this you need to apply the make_scorer factory to your custom loss function like:

from sklearn.metrics import make_scorer
score = make_scorer(my_custom_loss_func, greater_is_better=False)

In your particular case with Random Forests though you can't customize the criterion, what you could do is to optimize the hyperparameters with GridSearchCV and there you could use your custom loss.

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    Are you sure about that ? I think it's just that RandomForestRegressor doesn't accept custom criterion.. – abcdaire Jan 18 '19 at 18:21
  • True, I just answered in general, now I suggested GridSearchCV for his particular case. – Franco Piccolo Jan 18 '19 at 18:28
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    A make_scorer factory is use for a custom metric (which can be a potential loss function). I think it's important to make the distinction (metric / loss ) , and I'll say that on scikit-learn you can rarely easily use a custom loss function (apart if you touch the source code) , but you can do hyperparameter search using a custom metric. – abcdaire Jan 18 '19 at 18:41
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    Scorer and loss function are different so this is not an answer to OP – Sergey Bushmanov Jan 19 '19 at 8:09
  • @FrancoPiccolo what should be the arguments passed in to the custom loss function? Are y_true and y_pred predefined in scikit learn? My label matrix is named “labm”. If I use it in place of y_true, what should I use in place of y_pred? – Moonzarin Esha Jan 19 '19 at 8:20

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