# Tagging similar sentences with lower time complexity than n^2

This is my first post, have been a lurker for a long time, so will try my best to explain myself here.

I have been using lowest common substring method along with basic word match and substring match(regexp) for clustering similar stories on the net. But the problem is its time complexity is n^2 (I compare each title to all the others). I've done very basic optimizations like storing and skipping all the matched titles.

What I want is some kind of preprocessing of the chunk of text so that for each iteration i reduce number of posts to match to. Any further optimizations are also welcome.

Here are the functions i use for the same. the main function which calls them first calls word_match, if more than 70% of the word matches i further go down and call 'substring_match' and LCSubstr_len. The code is in Python, I can use C as well

``````import re

def substring_match(a,b):
try:
c = re.match(a,b)
return c if c else True if re.match(b,a) else False
except:
return False

def LCSubstr_len(S, T):
m = len(S); n = len(T)
L = [[0] * (n+1) for i in xrange(m+1)]
lcs = 0
for i in xrange(m):
for j in xrange(n):
if S[i] == T[j]:
L[i+1][j+1] = L[i][j] + 1
lcs = max(lcs, L[i+1][j+1])
else:
L[i+1][j+1] = max(L[i+1][j], L[i][j+1])
return lcs/((float(m+n)/2))

def word_match(str1,str2):
matched = 0
try:
str1,str2 = str(str1),str(str2)
assert isinstance(str1,str)
except:
return 0.0
words1 = str1.split(None)
words2 = str2.split(None)
for i in words1:
for j in words2:
if i.strip() ==j.strip():
matched +=1
len1 = len(words1)
len2 = len(words2)
perc_match = float(matched)/float((len1+len2)/2)
return perc_match
``````
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Use an inverted index: for each word, store a list of pairs (docId, numOccurences). Then, to find all strings which might be similar to a given string, go through its words and look up strings containing that word in the inverted index. This way you'll get a table "(docId, wordMatchScore)" that automatically contains only entries where wordMatchScore is non-zero.

There are a huge number of possible optimizations; also, your code is extremely non-optimal, but if we're talking about decreasing the number of string pairs for comparison, then that's it.

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Thanks for the reply...can you also tell me what should i use to create inverted index (use lucene(pylucene) or dictionaries in python). My data size could increase to a maximum of 500k posts. BTW awesome advice, thanks. I will be rewriting the word_match and will get rid of substring match. – Rafi Sep 1 '10 at 19:41
No, you don't need lucene for this (until your data actually increases to 500k posts, at which point my advice won't help at all). Just use simple dictionaries. – jkff Sep 1 '10 at 20:37

Speeding up `word_match` is easy with sets:

``````def word_match(str1,str2):
# .split() splits on all whitespace, you dont needs .strip() after
words1 = set(str1.split())
words2 = set(str2.split())
common_words = words1 & words2
return 2.0*len(common_words)/(len(words1)+len(words2))
``````

It also shows that 'A A A' and 'A' have 100% in common by this measure ...

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