1

I am using the tensorflow to predict ctr of ads with the google wide&deep model. Absolutely, this is a classification problem which to predict the ad will be click(1) or not(0).

But the result of 1 or 0 should be computed with a probability such as if p(x=1) >0.2, the result will be 1, and otherwise 0.

My question is how to get the probability.

I have print much information in estimator.py[both use wide_n_deep model or wide model only], function predict and some functions it called in estimator.py or graph_actions.py.

But it doesn't work.(The predict result is also 0 or 1, not the probability of 0 or 1.)

In API DOCS, a method named predict_proba will return the probability. But when I use it as pred_proba = m.predict_proba(x=None, input_fn=lambda: input_fn(df_test)), it returns an array with infinite length. How to use this method?

My code was modified based on: wide_n_deep_tutorial.py

Thanks.

6
  • how it doesn't work, would you please specify more detail?
    – Tianjin Gu
    Feb 27, 2017 at 11:11
  • The predict result is also 0 or 1, not the probability of 0 or 1.
    – Cow
    Feb 28, 2017 at 1:27
  • You may check the evaluate method which returning several metrics contain probability.
    – Tianjin Gu
    Feb 28, 2017 at 3:13
  • sorry, but I found the evaluate method returns the accuracy, auc and so on. But not the probability. Could you tell more detailed? and in the API, a method named predict_prob is said to generate the probality, but when i use it, it return an array with infinite length.
    – Cow
    Feb 28, 2017 at 7:44
  • what's your version of tensorflow?
    – Tianjin Gu
    Feb 28, 2017 at 9:03

1 Answer 1

0

Replace the pred_proba = m.predict_proba(x=None, input_fn=lambda: input_fn(df_test))

By pred_proba = m.predict_proba(input_fn=lambda: input_fn(df_test))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.