通过pos_tag过滤SpaCy noun_chunks

问题描述 投票:0回答:1

正如subj行所说,我正在尝试根据单个POS标签提取noun_chunks的元素。似乎noun_chunk的元素无法访问全局句子POS标签。

演示问题:


[i.pos_ for i in nlp("Great coffee at a place with a great view!").noun_chunks]
>>> 
AttributeError: 'spacy.tokens.span.Span' object has no attribute 'pos_'

这是我效率不高的解决方案:

def parse(text):
    doc = nlp(text.lower())
    tags = [(idx,i.text,i.pos_) for idx,i in enumerate(doc)]

    chunks = [i for i in doc.noun_chunks]

    indices = []
    for c in chunks:
        indices.extend(j for j in range(c.start_char,c.end_char))
    non_chunks = [w for w in ''.join([i for idx,i in enumerate(text) if idx not in indices]).split(' ') 
                  if w != '']

    chunk_words = [tup[1] for tup in tags if tup[1] not in non_chunks and tup[2] not in ['DET','VERB','SYM','NUM']] #these are the POS tags which I wanted to filter out from the beginning!

    new_chunks = []
    for c in chunks:
        new_words = [w for w in str(c).split(' ') if w in chunk_words]
        if len(new_words) > 1:
            new_chunk = ' '.join(new_words)
            new_chunks.append(new_chunk)
    return new_chunks

parse(
"""
I may be biased about Counter Coffee since I live in town, but this is a great place that makes a great cup of coffee. I have been coming here for about 2 years and wish I would have found it sooner. It is located right in the heart of Forest Park and there is a ton of street parking. The coffee here is great....many other words could describe it, but that sums it up perfectly. You can by coffee by the pound, order a hot drink, and they also have food. On the weekend, there are donuts brought in from Do-Rite Donuts which have almost a cult like following. The food is a little on the high end price wise, but totally worth it. I am a self admitted latte snob and they make an amazing latte here. You can add skim, whole, almond or oat milk and they will make it happen. I always order easy foam and they always make it perfectly. My girlfriend loves the Chai Latte with Oat Milk and I will admit it is pretty good. Give them a try.
""")

>>>
['counter coffee',
 'great place',
 'great cup',
 'forest park',
 'street parking',
 'many other words',
 'hot drink',
 'almost cult',
 'high end price',
 'latte snob',
 'amazing latte',
 'oat milk',
 'easy foam',
 'chai latte',
 'oat milk']

欢迎使用更快的方法来解决相同的问题!

python nlp spacy chunks pos-tagger
1个回答
0
投票

此链接的原始功劳:Phrase extraction

 def get_nns(doc):
        nns = []
        for token in doc:
            # Try this with other parts of speech for different subtrees.
            if token.pos_ == 'NOUN':
                pp = ' '.join([tok.orth_ for tok in token.subtree])
                nns.append(pp)
        return nns

 import spacy
    nlp = spacy.load('en_core_web_sm')
    ex = 'I am having a Great coffee at a place with a great view!'
    doc = nlp(ex)
    print(get_nns(doc))

输出:

['a Great coffee', 'a place with a great view', 'a great view']
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