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November 23, 2018 03:13
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[K-fold train function on Keras] #python #keras
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from sklearn.model_selection import KFold | |
from sklearn.metrics import * | |
def kf_fit(model, x_train=X, y_train=y, test_data=test): | |
kf = KFold(n_splits=10, shuffle=True, random_state=42069) | |
preds = [] | |
# test_data = pad_sequences(test_data) | |
fold = 0 | |
aucs = 0 | |
for train_idx, val_idx in kf.split(x_train): | |
x_train_f = x_train[train_idx] | |
y_train_f = y_train[train_idx] | |
x_val_f = x_train[val_idx] | |
y_val_f = y_train[val_idx] | |
model.fit(x_train_f, y_train_f, | |
batch_size=256, | |
epochs=12, | |
verbose = 0, | |
validation_data=(x_val_f, y_val_f)) | |
# Get accuracy of model on validation data. It's not AUC but it's something at least! | |
preds_val = model.predict([x_val_f], batch_size=512) | |
preds.append(model.predict(test_data)) | |
fold+=1 | |
fpr, tpr, thresholds = roc_curve(y_val_f, preds_val, pos_label=1) | |
aucs += auc(fpr,tpr) | |
print('Fold {}, AUC = {}'.format(fold,auc(fpr, tpr))) | |
print("Cross Validation AUC = {}".format(aucs/10)) |
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