scikit学习tfidf的实现与手动实现不同

时间:2019-02-18 12:05:47

标签: python scikit-learn tf-idf tfidfvectorizer python-textprocessing

我尝试使用公式手动计算tfidf的值,但是我得到的结果与使用scikit-learn实现时得到的结果不同。

from sklearn.feature_extraction.text import TfidfVectorizer

tv = TfidfVectorizer()

a = "cat hat bat splat cat bat hat mat cat"
b = "cat mat cat sat"

tv.fit_transform([a, b]).toarray()

# array([[0.53333448, 0.56920781, 0.53333448, 0.18973594, 0.        ,
#             0.26666724],
#            [0.        , 0.75726441, 0.        , 0.37863221, 0.53215436,
#             0.        ]])

tv.get_feature_names()
# ['bat', 'cat', 'hat', 'mat', 'sat', 'splat']

我尝试手动计算文档的tfidf,但结果与TfidfVectorizer.fit_transform不同。

(np.log(2+1/1+1) + 1) * (2/9) = 0.5302876358044202
(np.log(2+1/2+1) + 1) * (3/9) = 0.750920989498456
(np.log(2+1/1+1) + 1) * (2/9) = 0.5302876358044202
(np.log(2+1/2+1) + 1) * (1/9) = 0.25030699649948535
(np.log(2+1/1+1) + 1) * (0/9) = 0.0
(np.log(2+1/1+1) + 1) * (1/9) = 0.2651438179022101

我应该有的是

[0.53333448, 0.56920781, 0.53333448, 0.18973594, 0, 0.26666724]

1 个答案:

答案 0 :(得分:1)

TFIDF有许多变体。 sklearn使用的公式是:

(count_of_term_t_in_d) * ((log ((NUMBER_OF_DOCUMENTS + 1) / (Number_of_documents_where_t_appears +1 )) + 1)




2 * (np.log((1 + 2)/(1+1)) + 1) = 2.8109302162163288
3 * (np.log((1 + 2)/(2+1)) + 1) = 3.0
2 * (np.log((1 + 2)/(1+1)) + 1) = 2.8109302162163288
1 * (np.log((1 + 2)/(2+1)) + 1) = 1.0
0 * (np.log((1 + 2)/(2+1)) + 1) = 0.0
1 * (np.log((1 + 2)/(1+1)) + 1) = 1.4054651081081644

计算后,最终的TFIDF向量通过欧几里得范数进行归一化:

tfidf_vector = [2.8109302162163288, 3.0, 2.8109302162163288, 1.0, 0.0, 1.4054651081081644]

tfidf_vector = tfidf_vector / np.linalg.norm(tfidf_vector)

print(tfidf_vector)

[0.53333448, 0.56920781, 0.53333448, 0.18973594, 0, 0.26666724]