The k-mismatch problem revisited

Abstract

We revisit the complexity of one of the most basic problems in pattern matching. In the k-mismatch problem we must compute the Hamming distance between a pattern of length m and every m-length substring of a text of length n, as long as that Hamming distance is at most k. Where the Hamming distance is greater than k at some alignment of the pattern and text, we simply output "No". We study this problem in both the standard offline setting and also as a streaming problem. In the streaming k-mismatch problem the text arrives one symbol at a time and we must give an output before processing any future symbols. Our main results are as follows: 1) Our first result is a deterministic O(n k2k / m+n polylog m) time offline algorithm for k-mismatch on a text of length n. This is a factor of k improvement over the fastest previous result of this form from SODA 2000 by Amihood Amir et al. 2) We then give a randomised and online algorithm which runs in the same time complexity but requires only O(k2polylog m) space in total. 3) Next we give a randomised (1+ε)-approximation algorithm for the streaming k-mismatch problem which uses O(k2polylog m / ε2) space and runs in O(polylog m / ε2) worst-case time per arriving symbol. 4) Finally we combine our new results to derive a randomised O(k2polylog m) space algorithm for the streaming k-mismatch problem which runs in O(kk + polylog m) worst-case time per arriving symbol. This improves the best previous space complexity for streaming k-mismatch from FOCS 2009 by Benny Porat and Ely Porat by a factor of k. We also improve the time complexity of this previous result by an even greater factor to match the fastest known offline algorithm (up to logarithmic factors).

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