Similarity between two text documents

I am looking at working on an NLP project, in any language (though Python will be my preference).

I am wanting to write a program that will take two documents and determine how similar they are.

As I am fairly new to this and a quick google search does not point me to much. Do you know of any references (websites, textbooks, journal articles) which cover this subject and would be of help to me?

Thanks

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Similar question here stackoverflow.com/questions/101569/… witch some nice answers – Dr. KingSchultz Jun 30 '12 at 18:07

The common way of doing this is to transform the documents into tf-idf vectors, then compute the cosine similarity between them. Any textbook on information retrieval (IR) covers this. See esp. Introduction to Information Retrieval, which is free and available online.

Tf-idf (and similar text transformations) are implemented in the Python packages Gensim and scikit-learn. In the latter package, computing cosine similarities is as easy as

``````from sklearn.feature_extraction.text import TfidfVectorizer

documents = [open(f) for f in text_files]
tfidf = TfidfVectorizer().fit_transform(documents)
# no need to normalize, since Vectorizer will return normalized tf-idf
pairwise_similarity = tfidf * tfidf.T
``````

or, if the documents are plain strings,

``````>>> vect = TfidfVectorizer(min_df=1)
>>> tfidf = vect.fit_transform(["I'd like an apple",
...                             "An apple a day keeps the doctor away",
...                             "Never compare an apple to an orange",
...                             "I prefer scikit-learn to Orange"])
>>> (tfidf * tfidf.T).A
array([[ 1.        ,  0.25082859,  0.39482963,  0.        ],
[ 0.25082859,  1.        ,  0.22057609,  0.        ],
[ 0.39482963,  0.22057609,  1.        ,  0.26264139],
[ 0.        ,  0.        ,  0.26264139,  1.        ]])
``````

though Gensim may have more options for this kind of task.

[Disclaimer: I was involved in the scikit-learn tf-idf implementation.]

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@larsmans Can you explain the array little bit if possible, how should I be reading this array. First two columns are similarity between First two sentences? – Null-Hypothesis Aug 25 '12 at 0:47
@Null-Hypothesis: at position (i,j), you find the similarity score between document i and document j. So, at position (0,2) is the similarity value between the first document and the third (using zero-based indexing), which is the same value that you find at (2,0), because cosine similarity is commutative. – Fred Foo Aug 26 '12 at 11:24
If I were to average all of the values outside of the diagonal of 1's, would that be a sound way of getting a single score of how similar the four documents are to each other? If not, is there a better way of determining overall similarity between multiple documents? – user301752 Dec 11 '12 at 16:05
@user301752: you could take the element-wise mean of the tf-idf vectors (like k-means would do) with `X.mean(axis=0)`, then compute the average/maximum/median(∗) Euclidean distance from that mean. (∗) Pick whichever has your fancy. – Fred Foo Dec 11 '12 at 16:12
@curious: I updated the example code to the current scikit-learn API; you might want to try the new code. – Fred Foo Jan 14 '13 at 15:34

Identical to @larsman, but with some preprocessing

``````import nltk, string
from sklearn.feature_extraction.text import TfidfVectorizer

stemmer = nltk.stem.porter.PorterStemmer()
remove_punctuation_map = dict((ord(char), None) for char in string.punctuation)

def stem_tokens(tokens):
return [stemmer.stem(item) for item in tokens]

'''remove punctuation, lowercase, stem'''
def normalize(text):
return stem_tokens(nltk.word_tokenize(text.lower().translate(remove_punctuation_map)))

vectorizer = TfidfVectorizer(tokenizer=normalize, stop_words='english')

def cosine_sim(text1, text2):
tfidf = vectorizer.fit_transform([text1, text2])
return ((tfidf * tfidf.T).A)[0,1]

print cosine_sim('a little bird', 'a little bird')
print cosine_sim('a little bird', 'a little bird chirps')
print cosine_sim('a little bird', 'a big dog barks')
``````
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@ Renaud, really good and clear answer! I have two doubts: I) what is the [0,1] that you incorporate after tfidf * tfidf.T) and II) The inverse document frequency is formed from all the articles or just two (considering that you have more than 2)? – Andres Azqueta Apr 21 at 14:55
@AndresAzqueta [0,1] is the positions in the matrix for the similarity since two text inputs will create a 2x2 symmetrical matrix. – Nakata May 1 at 20:18

Generally a cosine similarity between two documents is used as a similarity measure of documents. In Java, you can use Lucene (if your collection is pretty large) or LingPipe to do this. The basic concept would be to count the terms in every document and calculate the dot product of the term vectors. The libraries do provide several improvements over this general approach, e.g. using inverse document frequencies and calculating tf-idf vectors. If you are looking to do something copmlex, LingPipe also provides methods to calculate LSA similarity between documents which gives better results than cosine similarity. For Python, you can use NLTK.

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Here's a little app to get you started...

``````import difflib as dl

sim = dl.get_close_matches

s = 0
wa = a.split()
wb = b.split()

for i in wa:
if sim(i, wb):
s += 1

n = float(s) / float(len(wa))
print '%d%% similarity' % int(n * 100)
``````
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difflib is very slow if you going to work with large number of docs. – Phyo Arkar Lwin Sep 19 '12 at 13:44

You might want to try this online service for cosine document similarity http://www.scurtu.it/documentSimilarity.html

``````import urllib,urllib2
import json
API_URL="http://www.scurtu.it/apis/documentSimilarity"
inputDict={}
inputDict['doc1']='Document with some text'
inputDict['doc2']='Other document with some text'
params = urllib.urlencode(inputDict)
f = urllib2.urlopen(API_URL, params)