Fix kcross validation

This commit is contained in:
Paul Schaub 2018-08-07 17:54:05 +02:00
parent 88a7c021d8
commit 2dfe5ef1b6
Signed by: vanitasvitae
GPG Key ID: 62BEE9264BF17311
2 changed files with 11 additions and 19 deletions

View File

@ -24,15 +24,8 @@ def split(data, k):
bucketsize = int(len(samples) / k)
print(k)
print(len(data))
print(len(samples))
print(bucketsize)
# K steps
for i in range(k):
eval_dict = []
train_dict = []
eval_samples = []
train_samples = []
for j in range(k):
@ -41,19 +34,18 @@ def split(data, k):
else:
train_samples.extend(samples[i*bucketsize:(i+1)*bucketsize])
for s in eval_samples:
# Create new dictionaries in the eval lists
X_eval.append({'dc': s[:-1]})
y_eval.append({'dc': s[-1]})
# Create new dictionaries in the eval lists
X_eval.append({'dc': eval_samples[:-1]})
y_eval.append({'dc': eval_samples[-1]})
for s in train_samples:
X_train.append({'dc': s[:-1]})
y_train.append({'dc': s[-1]})
X_train.append({'dc': train_samples[:-1]})
y_train.append({'dc': train_samples[-1]})
print(len(X_train) / 12)
#print(X_train)
#print(y_train)
exit(0)
print(len(X_eval))
print(len(y_eval))
print(len(X_train))
print(len(y_train))
return X_train, y_train, X_eval, y_eval

View File

@ -25,7 +25,7 @@ n = pywatts.neural.Net(feature_cols=feature_col)
(X_train, y_train, X_eval, y_eval) = kcross.split(df, K)
train_eval = {}
#train_eval = {}
if TRAIN:
# Train the model with the steps given