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I'm new to scikit-learn and random forest regression and was wondering if there is an easy way to get the predictions from every tree in a random forest in addition to the combined prediction. I would like to output all of the predictions in a list and not view the entire tree. I know that I can get the leaf indices using the apply method, but I'm not sure how to use that to get the value from the leaf. Any help is appreciated.

Edit: Here's what I have so far from comments below. It wasn't clear to me before that the trees in the estimators_ attribute could be called, but it seems that the predict method can be used on each tree using that attribute. Is this the best way to do this, though?

numberTrees = 100
clf = RandomForestRegressor(n_estimators=numberTrees)
clf.fit(X,Y)
for tree in range(numberTrees):
    print(clf.estimators_[tree].predict(val.irow(1)))
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+1 – You can also do the same thing quite nicely with list comprehension: per_tree_pred = [tree.predict(X) for tree in clf.estimators_] – Bill Cheatham Aug 18 '14 at 18:41

Chunky, I use sklearn a fair bit in Kaggle contests and I'm pretty sure that what you have up there is about the best you can do. As you noted, predict() returns the prediction for the whole RF, but not for its component trees. It can return a matrix, but that's only for the case where there are multiple targets being learned together. In that case it returns one prediction per target, it doesn't return predictions for each tree. You can get the individual tree predictions in R's random forest using predict.all = True, but sklearn doesn't have that. If you tried using apply(), you'd get a matrix of leaf indices, and then you'd still have to iterate over the trees to find out what the prediction for that tree/leaf combination was. So I think what you have is about as good as it gets.

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Thanks for the reply. This seems like something that anyone using the ensemble methods in scikit-learn would use, so I'm surprised that I haven't gotten more input from others. My particular interest is seeing how RF can be used for predictions with 2 or more answers. So, I'm plotting the prediction from each tree to see the distribution of results. – chunky Dec 19 '13 at 15:54

I am not 100% sure what you exactly want, but there are other some methods in Scikit-learns Random Forest Regressor that will most likely return what you want, specifically the predict method! This method returns an array of the predicted values. What you were referring to about getting the mean is the score method, which simply uses the predict method to return the coefficient of the R squared determinant.

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Random Forest is an ensemble method that averages the predictions from many decision trees. The predict method gives the average of the predictions from all of the trees, but I would like to see all of the predictions for a given input. E.g., if I use 10 estimators in the Random Forest regressor, I would like to see the predictions from the 10 trees instead of the average that is given by the predict method. – chunky Dec 16 '13 at 18:24
    
@chunky I know what a random forest is, and that is odd, because given the documentation, it seems that predict would give an array of the predictions from each tree, which is what you are asking for. I have not used random forests in a couple months and cannot test this out for you right now, but based on the documentation, you are describing score, not predict. Score outputs the average, predict outputs an array of all predictions based on all of the trees – Ryan Saxe Dec 16 '13 at 18:37
    
Score returns the R^2 value which is not what I want at all. Per the documentation, predict returns 'The predicted regression target of an input sample is computed as the mean predicted regression targets of the trees in the forest'. It returns the average of all of the trees predictions. I don't want the average of the predictions, but the predictions themselves. – chunky Dec 16 '13 at 18:48
    
Ahh.. I think I'm getting close now. I was using predict on the Random Forest to get the average prediction on the trees in the forest. I just needed to use the predict method on each tree. It looks something like this.clf = RandomForestRegressor(); clf.fit(X,Y); for tree in range(numberTrees): print(clf.estimators_[tree].predict(val.irow(1))) I'm not sure if this is the best way to do it, though. – chunky Dec 16 '13 at 19:24
    
I mean that does it, but I still don't understand how you are actually getting a value from predict when it returns an array of the predictions on each tree...so theoretically predict returns an array of what you are doing in your for loop. Maybe you are not using the most up to date version of Scikit learn. – Ryan Saxe Dec 16 '13 at 20:17

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