AttributeError:'unicode'对象没有属性'wup_similarity'

问题描述 投票:0回答:1

我正在使用Python 2.7中的nltk模块。以下是我的代码

from nltk.corpus import wordnet as wn

listsyn1 = []
listsyn2 = []

for synset in wn.synsets('dog', pos=wn.NOUN):
    print synset.name()
    for lemma in synset.lemmas():
        listsyn1.append(lemma.name())

for synset in wn.synsets('paw', pos=wn.NOUN):
    print synset.name()
    for lemma in synset.lemmas():
        listsyn2.append(lemma.name())

countsyn1 = len(listsyn1)
countsyn2 = len(listsyn2)

sumofsimilarity = 0;
for firstgroup in listsyn1:
    for secondgroup in listsyn2:
        print(firstgroup.wup_similarity(secondgroup))
        sumofsimilarity = sumofsimilarity + firstgroup.wup_similarity(secondgroup)

averageofsimilarity = sumofsimilarity/(countsyn1*countsyn2)

当我尝试运行此代码时,我收到错误“AttributeError:'unicode'对象没有属性'wup_similarity'”。谢谢你的帮助。

python unicode nltk wordnet
1个回答
2
投票

相似性度量只能通过Synset对象访问,而不是Lemmalemma_names(即str类型)。

dog = wn.synsets('dog', 'n')[0]
paw = wn.synsets('paw', 'n')[0]

print(type(dog), type(paw), dog.wup_similarity(paw))

[OUT]:

<class 'nltk.corpus.reader.wordnet.Synset'> <class 'nltk.corpus.reader.wordnet.Synset'> 0.21052631578947367

当你得到.lemmas()并从.names()对象访问Synset属性时,你得到str

dog = wn.synsets('dog', 'n')[0]
print(type(dog), dog)
print(type(dog.lemmas()[0]), dog.lemmas()[0])
print(type(dog.lemmas()[0].name()), dog.lemmas()[0].name())

[OUT]:

<class 'nltk.corpus.reader.wordnet.Synset'> Synset('dog.n.01')
<class 'nltk.corpus.reader.wordnet.Lemma'> Lemma('dog.n.01.dog')
<class 'str'> dog

您可以使用hasattr函数来检查哪些对象/类型可以访问某个函数或属性:

dog = wn.synsets('dog', 'n')[0]
print(hasattr(dog, 'wup_similarity'))
print(hasattr(dog.lemmas()[0], 'wup_similarity'))
print(hasattr(dog.lemmas()[0].name(), 'wup_similarity'))

[OUT]:

True
False
False

最有可能的是,你想要一个与https://github.com/alvations/pywsd/blob/master/pywsd/similarity.py#L76类似的函数,它可以在两个同义词中最大化wup_similarity,但请注意,有许多需要注意的前形式化。

所以我认为你想通过使用.lemma_names()来避免它。也许,你可以这样做:

def ss_lnames(word):
    return set(chain(*[ss.lemma_names() for ss in wn.synsets(word, 'n')]))

dog_lnames = ss_lnames('dog')
paw_lnames = ss_lnames('paw')

for dog_name, paw_name in product(dog_lnames, paw_lnames):
    for dog_ss, paw_ss in product(wn.synsets(dog_name, 'n'), wn.synsets(paw_name, 'n')):
        print(dog_ss, paw_ss, dog_ss.wup_similarity(paw_ss))  

但最有可能的结果是不可解释和不可靠的,因为在外部和内部循环中synset查找机器人之前没有任何词义消歧。

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