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How to find all intersections (also called the longest common substrings) of two strings and their positions in both strings?

For example, if S1="never" and S2="forever" then resulted intersection must be ["ever"] and its positions are [(1,3)]. If S1="address" and S2="oddness" then resulted intersections are ["dd","ess"] and their positions are [(1,1),(4,4)].

Shortest solution without including any library is preferable. But any correct solution is also welcomed.

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Do the substrings have to appear at the same position in both strings (as they do in both your examples)? –  NPE Sep 27 '11 at 15:47
@aix: no, they can appear in different positions like "never" and "forever". I've changed example. –  psihodelia Sep 27 '11 at 15:48
What do you mean by "all solutions", if for "call" and "wall" the right solution is ["all"] and not ["a", "al", "all", "ll", "l", "l"]? Do you mean all the maximal solutions? What is the precise definition here? –  julkiewicz Sep 27 '11 at 15:48
And do you care about time complexity, or not so much? –  julkiewicz Sep 27 '11 at 15:50
@psihodelia: Then post your code as a jumping off point. –  Steven Rumbalski Sep 27 '11 at 16:07

5 Answers 5

up vote 8 down vote accepted

Well, you're saying that you can't include any library. However, Python's standard difflib contains a function which does exactly what you expect. Considering that it is a Python interview question, familiarity with difflib might be what the interviewer expected.

In [31]: import difflib

In [32]: difflib.SequenceMatcher(None, "never", "forever").get_matching_blocks()
Out[32]: [Match(a=1, b=3, size=4), Match(a=5, b=7, size=0)]

In [33]: difflib.SequenceMatcher(None, "address", "oddness").get_matching_blocks()
Out[33]: [Match(a=1, b=1, size=2), Match(a=4, b=4, size=3), Match(a=7, b=7, size=0)]

You can always ignore the last Match tuple, since it's dummy (according to documentation).

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Thank you! I think your method is the best. –  psihodelia Sep 28 '11 at 8:16

This can be done in O(n+m) where n and m are lengths of input strings.

The pseudocode is:

function LCSubstr(S[1..m], T[1..n])
    L := array(1..m, 1..n)
    z := 0
    ret := {}
    for i := 1..m
        for j := 1..n
            if S[i] = T[j]
                if i = 1 or j = 1
                    L[i,j] := 1
                    L[i,j] := L[i-1,j-1] + 1
                if L[i,j] > z
                    z := L[i,j]
                    ret := {}
                if L[i,j] = z
                    ret := ret ∪ {S[i-z+1..z]}
    return ret

See the Longest_common_substring_problem wikipedia article for more details.

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Yea, that was my first thought, however dynamic programming usually isn't exactly a one-liner. –  julkiewicz Sep 27 '11 at 15:52

Here's what I could come up with:

import itertools

def longest_common_substring(s1, s2):
   set1 = set(s1[begin:end] for (begin, end) in
              itertools.combinations(range(len(s1)+1), 2))
   set2 = set(s2[begin:end] for (begin, end) in
              itertools.combinations(range(len(s2)+1), 2))
   common = set1.intersection(set2)
   maximal = [com for com in common
              if sum((s.find(com) for s in common)) == -1 * (len(common)-1)]
   return [(s, s1.index(s), s2.index(s)) for s in maximal]

Checking some values:

>>> longest_common_substring('address', 'oddness')
[('dd', 1, 1), ('ess', 4, 4)]
>>> longest_common_substring('never', 'forever')
[('ever', 1, 3)]
>>> longest_common_substring('call', 'wall')
[('all', 1, 1)]
>>> longest_common_substring('abcd1234', '1234abcd')
[('abcd', 0, 4), ('1234', 4, 0)]
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@agf that's what it returns... or am i missing something? added a test that shows it returns multiple values –  jterrace Sep 27 '11 at 16:18
Updated my answer to include the index of each substring in the two strings. @psihodelia is this what you want? –  jterrace Sep 27 '11 at 16:33
Ah, I see. I missed what was meant by maximal. See updated answer. –  jterrace Sep 27 '11 at 16:54
Bingo. It makes me shudder to think about the time complexity, something like O(n*(n!) + m*(m!))? –  agf Sep 27 '11 at 16:59
Yeah, running time is pretty terrible, but it should work fine for small strings anyway. –  jterrace Sep 27 '11 at 17:03

Batteries included!

The difflib module might have some help for you - here is a quick and dirty side-by-side diff:

>>> import difflib
>>> list(difflib.ndiff("never","forever"))
['- n', '+ f', '+ o', '+ r', '  e', '  v', '  e', '  r']
>>> diffs = list(difflib.ndiff("never","forever"))
>>> for d in diffs:
...   print {' ': '  ', '-':'', '+':'    '}[d[0]]+d[1:]
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I'm assuming you only want substrings to match if they have the same absolute position within their respective strings. For example, "abcd", and "bcde" won't have any matches, even though both contain "bcd".

a = "address"
b = "oddness"

#matches[x] is True if a[x] == b[x]
matches = map(lambda x: x[0] == x[1], zip(list(a), list(b)))

positions = filter(lambda x: matches[x], range(len(a)))
substrings = filter(lambda x: x.find("_") == -1 and x != "","".join(map(lambda x: ["_", a[x]][matches[x]], range(len(a)))).split("_"))

positions = [1, 2, 4, 5, 6]

substrings = ['dd', 'ess']

If you only want substrings, you can squish it into one line:

filter(lambda x: x.find("_") == -1 and x != "","".join(map(lambda x: ["_", a[x]][map(lambda x: x[0] == x[1], zip(list(a), list(b)))[x]], range(len(a)))).split("_"))
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Oops, it appears the question changed while I was writing an answer - the OP does want "abcd" and "bcde" to match, but that wasn't clear when I began. –  Kevin Sep 27 '11 at 16:17

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