Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to come up with an efficient algorithm that would work in JavaScript for the longest common subsequence problem. However, there are two main differences between my problem and the one described in the Wikipedia article. The first is that I will have more than two sets of characters. The second is that characters will never repeat in a set. This means that the length of each set will be at most about 50 characters (i.e. the printable ASCII chars).

For example, the sets may contain:


... and it should output ACO, ACT, ANO, and ANT, since these are the longest subsequences in all 4 sets (as far as I can tell from manually examining these sets).

Since none of the letters repeat, is there a more efficient algorithm I should consider rather than the one described in the Wikipedia article? If not, is there anywhere that describes how to convert the algorithm to having N sets instead of 2?

share|improve this question
Also ACO, to be complete. –  Daniel Fischer Dec 31 '11 at 1:37
@Senseful Misunderstood your question, so I have deleted that answer. –  Pradeep Dec 31 '11 at 1:49
@DanielFischer: thanks, I updated it –  Senseful Dec 31 '11 at 2:27

3 Answers 3

up vote 4 down vote accepted

Not sure how efficient an adaption of the normal LCS algorithm would be, so this may be inefficient, but since there aren't many eligible letters, it's not too horrible.

Make a successor matrix. For each string s, for each pair of letters (s[i],s[j]) with i < j, increment matrix[s[i]][s[j]]. A pair of letters can only be part of a longest common subsequence if matrix[a][b] = n = number of strings. Build a directed graph from the letters participating in such a pair, with an edge from a to b iff matrix[a][b] = n. Find a longest path in that graph.

share|improve this answer
+1: That is the solution. Could have saved myself a great deal of time by reading this before writing my long winded answer –  Keldon Alleyne Dec 31 '11 at 3:14
Thanks for the information! I'm now looking for a solution which finds several of the longest paths and I'm running into a few problems. If you think you could help, could you please take a look at my new question? –  Senseful Jan 1 '12 at 4:27

What you are trying to do is called multiple sequence alignment. The algorithm 'could' be rewritten to be n-dimensional, but that would increase the space complexity to Length ^ Dimensions.

Since none of the letters repeat, is there a more efficient algorithm I should consider rather than the one described in the Wikipedia article?

Perhaps. First create a mapping (a,b) such that a < b. For example the mappings for the first three characters of each sets is as follows

--- Mapping for character[0]
Z - B    A - C    A - N    Z - I
    A        N        I        A
    N        I        C        N
    I        B        O        C
    C        Z        T        O
    O        I        Z        T
    T        O        B        B

--- Mapping for character[1]
B - A    C - N    N - I    I - A
    N        I        C        N
    I        B        O        C
    C        Z        T        O
    O        I        Z        T
    T        O        B        B

--- Mapping for character[2]
A - N    N - I    N - C    I - N
    I        B        O        C
    C        Z        T        O
    O        I        Z        T
    T        O        B        B

Then retain only mappings that are common on all sets. Here's an example of following this process, traversing Set[A] (ZBANICOT), which will give us a set of relations that are common to all sets.

So with the letter Z you will observe that in Set[C], the only character that follows Z is B, so you can eliminate just about every mapping from Z that is not to B. But to cut a long story short, every mapping for Z is removed. Note, only mappings from Z are removed, not mappings to Z.

Also note that since Set[D] ends with B, we can safely eliminate all mappings from B. By following the process one can observe that A maps to N, C, O and T. Next is N, which maps to T and O.

I maps to O (honestly, "I/O") while C maps to O and T (how cute). And funnily enough O maps to nothing!!! How befitting.

Finally there is one more character, and T maps to nothing too (since ZBANICOT ends with T).

In the end you are left with the following mappings:

A - C    C - O    I - O    N - O
    N        T                 T

Now all you have to do is start from each of the keys (A, C, I and N) and search for the longest sequence without any repeating nodes (characters in this case).

Here are all of the common subsequences (all using the simple algorithm):

share|improve this answer
Thanks for the information! I'm now looking for a solution which doesn't contain the AO and AT results, though. I just asked a separate question about this. –  Senseful Jan 1 '12 at 4:25
I'll reply in the new question –  Keldon Alleyne Jan 1 '12 at 4:35

What if I stored character mapping for each set of characters and then incremented this count each time...

For the 1st set (ZBANICOT), this would create the following character pairs (28 of them):

    BA, BN, BI, BC, BO, BT
        AN, AI, AC, AO, AT
            NI, NC, NO, NT
                IC, IO, IT
                    CO, CT

For the 2nd set (ACNTBZIO), I would have 28 pairs again:

    CN, CT, CB, CZ, CI, CO
        NT, NB, NZ, NI, NO
            TB, TZ, TI, TO
                BZ, BI, BO
                    ZI, ZO

For the last 2 sets, I would have:

    NI, NC, NO, NT, NZ, NB
        IC, IO, IT, IZ, IB
            CO, CT, CZ, CB
                OT, OZ, OB
                    TZ, TB

    IA, IN, IC, IO, IT, IB
        AN, AC, AO, AT, AB
            NC, NO, NT, NB
                CO, CT, CB
                    OT, OB

(So to figure out the iteration count so far, let N equal the number of sets, and M be the number of characters in each set, we have N*(M)((M-1)/2) or 4*28=112 in this example)

Next, I would count the number of times each pair exists. For example,

PairCounts["ZB"] == 3
PairCounts["ZA"] == 2
// ...
PairCounts["AO"] == 4
PairCounts["AT"] == 4
// ...
PairCounts["AN"] == 4
PairCounts["AC"] == 4
PairCounts["CT"] == 4
PairCounts["NO"] == 4
PairCounts["NT"] == 4

Then, since we have 4 pairs, I would discard all pairs which don't have a count of 4. And then I would try concatting each pair in order to form the longest string possible.

share|improve this answer
You're on the right track, see my post - and I only spotted that because of your query on there being a more efficient algorithm because they are unique sets. –  Keldon Alleyne Dec 31 '11 at 3:06

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.