On pattern matching with k mismatches and few don't cares
February 01, 2016 Β· Declared Dead Β· π Information Processing Letters
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Authors
Marius Nicolae, Sanguthevar Rajasekaran
arXiv ID
1602.00621
Category
cs.DS: Data Structures & Algorithms
Citations
7
Venue
Information Processing Letters
Last Checked
4 months ago
Abstract
We consider the problem of pattern matching with $k$ mismatches, where there can be don't care or wild card characters in the pattern. Specifically, given a pattern $P$ of length $m$ and a text $T$ of length $n$, we want to find all occurrences of $P$ in $T$ that have no more than $k$ mismatches. The pattern can have don't care characters, which match any character. Without don't cares, the best known algorithm for pattern matching with $k$ mismatches has a runtime of $O(n\sqrt{k \log k})$. With don't cares in the pattern, the best deterministic algorithm has a runtime of $O(nk polylog m)$. Therefore, there is an important gap between the versions with and without don't cares. In this paper we give an algorithm whose runtime increases with the number of don't cares. We define an {\em island} to be a maximal length substring of $P$ that does not contain don't cares. Let $q$ be the number of islands in $P$. We present an algorithm that runs in $O(n\sqrt{k\log m}+n\min\{\sqrt[3]{qk\log^2 m},\sqrt{q\log m}\})$ time. If the number of islands $q$ is $O(k)$ this runtime becomes $O(n\sqrt{k\log m})$, which essentially matches the best known runtime for pattern matching with $k$ mismatches without don't cares. If the number of islands $q$ is $O(k^2)$, this algorithm is asymptotically faster than the previous best algorithm for pattern matching with $k$ mismatches with don't cares in the pattern.
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