15

when I am trying to export a random forest graph using the following command:

tree.export_graphviz(rnd_clf, out_file = None, feature_names = X_test[::1])

I receive the following error:

NotFittedError: This RandomForestClassifier instance is not fitted yet. 
Call 'fit' with appropriate arguments before using this method.

What I don't understand is why it keeps telling me this, even though I have fitted the random forest classifier using:

rnd_clf = RandomForestClassifier(  
             n_estimators=120,
             criterion='gini',
             max_features= None, 
             max_depth = 14 )

rnd_clf.fit(X_train, y_train)

and it works perfectly fine.

27

(Only going by the docs; no personal experience)

You are trying to plot some DecisionTree, using a function which signature reads:

sklearn.tree.export_graphviz(decision_tree, ...)

but you are passing a RandomForest, which is an ensemble of trees.

That's not going to work!

Going deeper, the code internally for this is here:

check_is_fitted(decision_tree, 'tree_')

So this is asking for the attribute tree_ of your DecisionTree, which exists for a DecisionTreeClassifier.

This attribute does not exist for a RandomForestClassifier! Therefore the error.

The only thing you can do: print every DecisionTree within your RandomForest ensemble. For this, you need to traverse random_forest.estimators_ to get the underlying decision-trees!

  • Thank you! I just thought that export_graphviz(decision_tree, ...) would be capable of display a full random forest. A quick followup question, displaying more than 100 trees in my case poses a visualisation problem. Is it possible to create a table which displays the most discriminate features at each tree depth? link – F. K. Sep 13 '17 at 11:57
  • That's not my area of expertise. Sorry! – sascha Sep 13 '17 at 12:09
6

Like the other answer said, you cannot do this for a forest, only a single tree. You can, however, graph a single tree from that forest. Here's how to do that:

forest_clf = RandomForestClassifier()
forest_clf.fit(X_train, y_train)
tree.export_graphviz(forest_clf.estimators_[0], out_file='tree_from_forest.dot')
(graph,) = pydot.graph_from_dot_file('tree_from_forest.dot')
graph.write_png('tree_from_forest.png')

Unfortunately, there's no easy way to graph the "best" tree or an overall ensemble tree from your forest, just a random example tree.

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