Great question and great answers! (Thanks @Sycorax, @AN6U5, and @user1771485). All of them helped me a lot to find an answer to the specific case, where I needed to use sample_weight during GridSearchCV, but my estimator was obtained using Pipeline. The issue differs from the previous solutions because Pipeline does not support fit_param; indeed, if you try to use fit_param = {... }
during the fit step (of GridSearchCV) you'll get
Pipeline.fit does not accept the fit_param parameter. You can pass parameters to specific steps of your pipeline using the stepname__parameter format, e.g. Pipeline.fit(X, y, logisticregression__sample_weight=sample_weight)
The pipeline I was using was
pipe = Pipeline(steps=[('normalizer', norm), ('estimator', svr)])
where norm
was a normalization step, svr = SVR()
, and the parameter grid
parameters_svr = dict (estimator = [svr], estimator__kernel = ['rbf', 'sigmoid'], ...)
Then, as advised by @user1771485
grid = GridSearchCV (estimator = pipe, param_grid = parameters_svr, cv = 3,
scoring = 'neg_mean_squared_error',
return_train_score = True, refit = True, n_jobs = -1)
and finally, (the part that truly matters)
grid.fit (X,y, estimator__sample_weight= weights)
fit_params
trick is the right answer. Please answer to yourself and validate your answer.fit
to be called with the entire list of weights for each fold, rather than the weights of just the datapoints in the fold?