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I am trying to print out the decision tree for a forest from scikit-learn ensemble: For example for a DecisionTreeClassifier, I would use:

from sklearn import tree  
clf = tree.DecisionTreeClassifier( criterion ='entropy', max_depth = 3,    
min_samples_leaf = 
clf = clf.fit( X_train, y_train) #Input this to analyze the training set.

import pydot, StringIO
dot_data = StringIO.StringIO() 
tree.export_graphviz( clf, out_file = dot_data,    
feature_names =[' age', 'sex', 'first_class', 'second_class', 'third_class'])
graph = pydot.graph_from_dot_data( dot_data.getvalue())
from IPython.core.display import Image
Image( filename =visualtree.png')

I tried a similar approach for Random Forest Regressor (see below and got an error)

# Fit regression model
from sklearn.ensemble import RandomForestRegressor
rfr_1 = RandomForestRegressor(n_estimators=10, max_depth=5)
rfr_1.fit(X, y)

from sklearn.ensemble import*
import pydot, StringIO
dot_data = StringIO.StringIO() 
ensemble.export_graphviz( rf1, out_file = dot_data,    
feature_names =[' Temperature', 'Translator Bacteria'])
graph = pydot.graph_from_dot_data( dot_data.getvalue())
from IPython.core.display import Image

Image( filename ='fish.png')

File "randomforestregressor.py", line 45, in ensemble.export_graphviz( rf1, out_file = dot_data,
NameError: name 'ensemble' is not defined

How would I accomplish this? thanks!

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1 Answer 1

The error message is pretty explicit:

File "randomforestregressor.py", line 45, in ensemble.export_graphviz( rf1, out_file = dot_data, NameError: name 'ensemble' is not defined

You access a variable named ensemble in your script line 45 but you never define such a variable. In your case you probably intended that variable to point to the sklearn.ensemble package:

from sklearn import ensemble

However if you do this you will likely get an AttributeError as the sklearn.ensemble package does not have export_graphviz function.

Instead what you might want to do is generate one image per tree in the forest by iterating over the elements of the rfr_1.estimators_ list and calling the export_graphviz method of the sklearn.tree package on each of those tree.

However in practice displaying the trees of a forest is very often useless. Practitioners typically build random forests with hundreds or thousands of trees to get a good predictive accuracy. In such cases, visually inspecting that many trees is impractical.

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Well said Ogrisel! Taking another tact, say I want to try to illustrate a solution at a discrete point in time, e.g., the price for 5-passenger mid-size cars in January 2014, how would I display such an answer using random forests? Thanks, Chris –  Chris Rigano Dec 30 '13 at 15:40
I have no idea what you are talking about but this is probably unrelated to the original question nor to this answer, therefore should probably be asked in separate question rather than in the comments of this answer. –  ogrisel Dec 30 '13 at 16:32
Please remove this question –  Chris Rigano Dec 30 '13 at 18:21

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