【问题标题】:export graphviz during decision tree giving error在给出错误的决策树期间导出 graphviz
【发布时间】:2016-03-03 17:38:54
【问题描述】:

我正在尝试为其创建决策树和图表。

print "\nCreating Pipeline for the analyzing and training ..."
dt_old = Pipeline([
                    ('bow', CountVectorizer(analyzer=split_into_lemmas)),  # strings to token integer counts
                    ('tfidf', TfidfTransformer()),  # integer counts to weighted TF-IDF scores
                    ('classifier', DecisionTreeClassifier(min_samples_split=20, random_state=99)),  # train on TF-IDF vectors w/ DecisionTree classifier
                ])
print("pipeline:", [name for name, _ in dt_old.steps])
print("-- 10-fold cross-validation , without any grid search")
dt_old.fit(msg_train, label_train)
scores = cross_val_score(dt_old, msg_train, label_train, cv=10)
print "mean: {:.3f} (std: {:.3f})".format(scores.mean(), scores.std())

from sklearn.externals.six import StringIO
import pydot

dot_data = StringIO()
with open("./plots/ritesh.dot", "w") as f:
    export_graphviz(dt_old, out_file=f)

每当我尝试为决策树创建点文件时,都会出现以下错误。

Creating Pipeline for the analyzing and training ...
('pipeline:', ['bow', 'tfidf', 'classifier'])
-- 10-fold cross-validation , without any grid search
mean: 0.960 (std: 0.007)
Traceback (most recent call last):
  File "DecisionTree.py", line 192, in <module>
    main()
  File "DecisionTree.py", line 128, in main
    export_graphviz(dt_old, out_file=f)
  File "/Users/ritesh/anaconda/lib/python2.7/site-packages/sklearn/tree/export.py", line 128, in export_graphviz
    recurse(decision_tree.tree_, 0, criterion=decision_tree.criterion)
AttributeError: 'Pipeline' object has no attribute 'tree_'

没有管道我可以生成点文件,但管道没有成功。我错过了什么吗?

生成的输出文件只是:

digraph Tree {

【问题讨论】:

    标签: python-2.7 scikit-learn graphviz pipeline decision-tree


    【解决方案1】:

    您应该在export_graphviz 函数中提供树对象,而不是管道对象。为此-您必须从管道中获取树分类器并将其传递给export_graphviz

    尝试使用最后几行来运行您的代码:

    with open("./plots/ritesh.dot", "w") as f:
        export_graphviz(dt_old.named_steps['classifier'], out_file=f)
    

    【讨论】:

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