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Let's say I have the following custom loss function that I'm using in sci-kit learn. In this case I'm only scoring the observations where my model scores above 0.8.

def customLoss(y_true, y_pred):
    a = pd.DataFrame({'Actuals':y_true, 'Preds': y_pred})
    a = a.query('Preds > 0.8')
    return(precision_score(a['Actuals'], a['Preds']))

param_grid = {'C': [0.001, 0.01, 0.1, 1, 10]}
scorer = make_scorer(mf.customLoss ,greater_is_better = True)
grid = GridSearchCV(LogisticRegression(class_weight = 'balanced'), param_grid = param_grid, scoring = scorer, cv = 5)

However, let's say I wanted to make the threshold (0.8) configurable. Obviously I would need to add a third argument to my loss function like this:

def customLoss(y_true, y_pred, threshold):
        a = pd.DataFrame({'Actuals':y_true, 'Preds': y_pred})
        a = a.query('Preds > @threshold')
        return(precision_score(a['Actuals'], a['Preds']))

However, I'm a little confused on where in the make_scorer function I'd put this third argument?

  • Please, refine your question to a single problem in order to make it clear. – sentence May 16 at 18:34
  • edited my question! – ben890 May 16 at 18:35
0

Try

grid = GridSearchCV(LogisticRegression(class_weight = 'balanced'), param_grid = param_grid, scoring = 'metric_you_want', cv = 5)

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