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I have already read this question: How should we interpret the results of the H2O predict function? Still don't understand if p1 is the probability between [0,1] and could be used equally as it 's a regression and i can apply my own threshold

edit: thank you for your answer still have some confusion about it, let's dig it suppose my outcome Y is [0,1], if Y is numeric i run it as REGRESSION and i have a single column as response. On the other hand if Y is factor run it as CLASSIFICATION and the output is: prediction/p0/p1. NOW, is p1 the same as use Y as numeric? Also http://docs.h2o.ai/h2o/latest-stable/h2o-docs/data-science/algo-params/calibrate_model.html calibrate_model parameter affects logloss but now the max F1 is still used as threshold on P0 P1 or on the calibrated probabilities? Can i use the calibrated probabilities for regression as the logloss is supposed less?

  • Data type of Y doesn't define if the problem is regression or classification. The semantic does so if Y contains {0,1} values only (never mind numeric or character) it probably begs classification. Hence predict probability and use classification. Just cast numeric to enum type using something like train.df['Y'] = as.factor(train.df['Y']). – topchef Feb 22 '18 at 19:00
  • in h2o if Y [0,1] is a factor it perform a classification, if is.numeric a regression – Andrea Mariani Feb 23 '18 at 9:28
  • from h2o docs: The data type of the response column determines the model category. If the response is a categorical variable (also called a factor or an enum), then a classification model is created. If the response column data type is numeric (either integer or real), then a regression model is created. – Andrea Mariani Feb 23 '18 at 9:56
  • code above shows how to change Y's type from numeric to factor. Again, it's about semantic and not about its formal type. – topchef Feb 23 '18 at 17:13
  • The trick is understanding that regardless of whether you are doing a classification or regression problem H2O will build a regression tree, because the tree isn’t predicting a class it is predicting a value between 0 and 1 (which is the uncalibrsted probability). So for a binary target you are not doing a regression problem. – Lauren Feb 23 '18 at 18:07
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the output of a binary classification problem for H2O will give you the class label (where the threshold is set to get you the max F1 score), the predicted value of class 0 (p0), and the predicted value of class 1 (p1).

These predicted values are uncalibrated probabilities, if you want actual probabilities you need to set H2O's model argument calibrate_model to True.

So to answer your question, yes p1 is the predicted value between 0 and 1 (for example you will see values like .23, .45. , .89, etc.) and because H2O builds regression trees you could technically use 1-p0 to get your p1 value (or vice versa) and in fact unless you set binomial_double_trees = True this is exactly what H2O is doing: it builds a single regression tree for one of the classes and then takes 1-(that class value) to get the predicted values for the other class.

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