I will try to be understandable.
I created a DNNClassifier estimator:
classifier = tf.estimator.DNNClassifier(
feature_columns=feature_column,
hidden_units=[10, 10],
n_classes=3)
I trained this model :
classifier.train(input_fn=lambda:train_input_fn(train_features, train_label, 1), steps=1000)
It is here that I have a problem. I want to change a little my evaluate function. I explain :
Target of my program is to know if my model is profitable or not. My features / label are for example :
| 2 | 1 | 6 | / | 2 |
If evaluation is correct I win the value in features[label] (6 for our example). If not, I lost 1.
So, problem is I don't care accuracy because it means nothing for me.
Currently my evaluate function is :
def eval_input_fn(features, labels, batch_size):
"""An input function for evaluation or prediction"""
features=dict(features)
if labels is None:
# No labels, use only features.
inputs = features
else:
inputs = (features, labels)
# Convert the inputs to a Dataset.
dataset = tf.data.Dataset.from_tensor_slices(inputs)
# Batch the examples
assert batch_size is not None, "batch_size must not be None"
dataset = dataset.batch(batch_size)
# Return the dataset.
return dataset
-
eval_result = classifier.evaluate(
input_fn=lambda:eval_input_fn(test_features, test_label,
1), steps=1000)
and result doesn't suit me :
INFO:tensorflow:Saving dict for global step 1000: accuracy = 0.555, average_loss = 0.96378326, global_step = 1000, loss = 0.96378326
If it is possible I would like at each iteration on my dataset calculate gain or loss if predicition during evaluation is ok or not. I search for hooks but no result.. Or if is there a way to export all good predicitions after evaluate()?
Have you an idea ?
Thanks a lot for your help !
predict
instead ofevaluate
for your case? You can then get the prediction first and decide whether you win or loss in your own way.