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.