Computing Abelian regularities on RLE strings
January 11, 2017 Β· Declared Dead Β· π arXiv.org
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Authors
Shiho Sugimoto, Naoki Noda, Shunsuke Inenaga, Hideo Bannai, Masayuki Takeda
arXiv ID
1701.02836
Category
cs.DS: Data Structures & Algorithms
Citations
7
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Two strings x and y are said to be Abelian equivalent if x is a permutation of y, or vice versa. If a string z satisfies z = xy with x and y being Abelian equivalent, then z is said to be an Abelian square. If a string w can be factorized into a sequence v_1,...,v_s of strings such that v_1 ,..., v_{s-1} are all Abelian equivalent and vs is a substring of a permutation of v_1, then w is said to have a regular Abelian period (p,t) where p = |v_1| and t = |v_s|. If a substring w_1[i..i+l-1] of a string w_1 and a substring w_2[j..j+l-1] of another string w_2 are Abelian equivalent, then the substrings are said to be a common Abelian factor of w_1 and w_2 and if the length l is the maximum of such then the substrings are said to be a longest common Abelian factor of w_1 and w_2. We propose efficient algorithms which compute these Abelian regularities using the run length encoding (RLE) of strings. For a given string w of length n whose RLE is of size m, we propose algorithms which compute all Abelian squares occurring in w in O(mn) time, and all regular Abelian periods of w in O(mn) time. For two given strings w_1 and w_2 of total length n and of total RLE size m, we propose an algorithm which computes all longest common Abelian factors in O(m^2n) time.
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