for i in range(2,10):
for j in range(1,500):
for k in range(1,15):
print(i,j,k)
update:
for i in range(2,10):
for j in range(1,500):
for k in range(1,15):
digits = datasets.load_digits()
np.putmask(digits.data, digits.data == 1, 0)
np.putmask(digits.data, digits.data == 2, 0)
np.putmask(digits.data, digits.data == 13, 12)
X_digits = digits.data
Y_digits = digits.target
split = int( len( X_digits ) *(0.75 + k*0.01))
X_train = X_digits[:split]
Y_train = Y_digits[:split]
X_test = X_digits[split:]
Y_test = Y_digits[split:]
knn = KNeighborsClassifier( n_neighbors = 4, n_jobs= -1, p=2)
bagging = BaggingClassifier(base_estimator=knn, n_estimators=i, n_jobs=-1, random_state = j)
bagging.fit(X_train,Y_train)
if bagging.score(X_test, Y_test)> 0.97:
print(bagging.score(X_test, Y_test),i,j,k)
from itertools import product
for a, b, c in product(range(2, 10), range(1, 500), range(1, 15)):
print(a, b, c)