我目前MultinomialNB()
设置了一个分类器,CountVectorizer
用于从文本文档中提取特征,虽然效果很好,但我想使用相同的方法来预测前 3-4 个标签,而不仅仅是前一个标签。
主要原因是有 c.90 个标签,数据输入不是很好,导致最高估计的准确率为 35%。如果我可以向用户提供前 3-4 个最有可能的标签作为建议,那么我可以显着提高准确率覆盖率。
有什么建议么?任何指针将不胜感激!
当前代码如下所示:
import numpy
import pandas as pd
from sklearn.feature_extraction.text import CountVectorizer
from sklearn.naive_bayes import MultinomialNB
from sklearn.pipeline import Pipeline
from sklearn.cross_validation import KFold
from sklearn.metrics import confusion_matrix, accuracy_score
df = pd.read_csv("data/corpus.csv", sep=",", encoding="latin-1")
df = df.set_index('id')
df.columns = ['class', 'text']
data = df.reindex(numpy.random.permutation(df.index))
pipeline = Pipeline([
('count_vectorizer', CountVectorizer(ngram_range=(1, 2))),
('classifier', MultinomialNB())
])
k_fold = KFold(n=len(data), n_folds=6, shuffle=True)
for train_indices, test_indices in k_fold:
train_text = data.iloc[train_indices]['text'].values
train_y = data.iloc[train_indices]['class'].values.astype(str)
test_text = data.iloc[test_indices]['text'].values
test_y = data.iloc[test_indices]['class'].values.astype(str)
pipeline.fit(train_text, train_y)
predictions = pipeline.predict(test_text)
confusion = confusion_matrix(test_y, predictions)
accuracy = accuracy_score(test_y, predictions)
print accuracy