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Hyperparameter tuning of Machine learning models using manual tuning
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#import libraries | |
from sklearn import datasets | |
from catboost import CatBoostClassifier | |
from sklearn.model_selection import cross_val_score | |
# load data | |
cancer = datasets.load_breast_cancer() | |
# target | |
y = cancer.target | |
# features | |
X = cancer.data | |
#Instantiate CatBoostClassifier, using a maximum depth of 3 | |
cbc = CatBoostClassifier(max_depth=3) | |
# 5 folds, scored on accuracy | |
cvs = cross_val_score(cbc, X, y, cv=5, scoring='accuracy') | |
#Mean value of cross validation score | |
print (f 'The mean value of cross val score is {cvs.mean()}') #mean = 0.96 | |
print("======="*5) | |
#Instantiate CatBoostClassifier, using a maximum depth of 5 | |
cbc1 = CatBoostClassifier(max_depth=5) | |
# 5 folds, scored on accuracy | |
cvs1 = cross_val_score(cbc1, X, y, cv=5, scoring='accuracy') | |
#Mean value of cross validation score | |
print (f 'The mean value of cross val score is {cvs1.mean()}') #mean = 0.97 |
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