Efficiently calculate word frequency in a string

2020-02-12 04:02发布

问题:

I am parsing a long string of text and calculating the number of times each word occurs in Python. I have a function that works but I am looking for advice on whether there are ways I can make it more efficient(in terms of speed) and whether there's even python library functions that could do this for me so I'm not reinventing the wheel?

Can you suggest a more efficient way to calculate the most common words that occur in a long string(usually over 1000 words in the string)?

Also whats the best way to sort the dictionary into a list where the 1st element is the most common word, the 2nd element is the 2nd most common word and etc?

test = """abc def-ghi jkl abc
abc"""

def calculate_word_frequency(s):
    # Post: return a list of words ordered from the most
    # frequent to the least frequent

    words = s.split()
    freq  = {}
    for word in words:
        if freq.has_key(word):
            freq[word] += 1
        else:
            freq[word] = 1
    return sort(freq)

def sort(d):
    # Post: sort dictionary d into list of words ordered
    # from highest freq to lowest freq
    # eg: For {"the": 3, "a": 9, "abc": 2} should be
    # sorted into the following list ["a","the","abc"]

    #I have never used lambda's so I'm not sure this is correct
    return d.sort(cmp = lambda x,y: cmp(d[x],d[y]))

print calculate_word_frequency(test)

回答1:

Use collections.Counter:

>>> from collections import Counter
>>> test = 'abc def abc def zzz zzz'
>>> Counter(test.split()).most_common()
[('abc', 2), ('zzz', 2), ('def', 2)]


回答2:

>>>> test = """abc def-ghi jkl abc
abc"""
>>> from collections import Counter
>>> words = Counter()
>>> words.update(test.split()) # Update counter with words
>>> words.most_common()        # Print list with most common to least common
[('abc', 3), ('jkl', 1), ('def-ghi', 1)]


回答3:

You can also use NLTK (Natural Language ToolKit). It provide very nice libraries for studying the processing the texts. for this example you can use:

from nltk import FreqDist

text = "aa bb cc aa bb"
fdist1 = FreqDist(text)

# show most 10 frequent word in the text
print fdist1.most_common(10)

the result will be:

[('aa', 2), ('bb', 2), ('cc', 1)]