I have found a set of best hyperparameters for my KNN estimator with Grid Search CV:
>>> knn_gridsearch_model.best_params_
{'algorithm': 'auto', 'metric': 'manhattan', 'n_neighbors': 3}
So far, so good. I want to train my final estimator with these new-found parameters. Is there a way to feed the above hyperparameter dict to it directly? I tried this:
>>> new_knn_model = KNeighborsClassifier(knn_gridsearch_model.best_params_)
but instead the hoped result new_knn_model
just got the whole dict as the first parameter of the model and left the remaining ones as default:
>>> knn_model
KNeighborsClassifier(algorithm='auto', leaf_size=30, metric='minkowski',
metric_params=None, n_jobs=1,
n_neighbors={'n_neighbors': 3, 'metric': 'manhattan', 'algorithm': 'auto'},
p=2, weights='uniform')
Disappointing indeed.
You can do that as follows:
new_knn_model = KNeighborsClassifier()
new_knn_model.set_params(**knn_gridsearch_model.best_params_)
Or just unpack directly as @taras suggested:
new_knn_model = KNeighborsClassifier(**knn_gridsearch_model.best_params_)
By the way, after finish running the grid search, the grid search object actually keeps (by default) the best parameters, so you can use the object itself. Alternatively, you could also access the classifier with the best parameters through
gs.best_estimator_
I just want to point out that using the grid.best_parameters
and pass them to a new model by unpacking
like:
my_model = KNeighborsClassifier(**grid.best_params_)
is good and all and I personally used it a lot.
However, as you can see in the documentation here, if your goal is to predict something using those best_parameters, you can directly use the grid.predict
method which will use these best parameters for you by default.
example:
y_pred = grid.predict(X_test)
Hope this was helpful.