String Consensus Problems with Swaps and Substitutions
July 25, 2025 Β· Declared Dead Β· π SPIRE
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Authors
EstΓ©ban Gabory, Laurent Bulteau, Gabriele Fici, Hilde Verbeek
arXiv ID
2507.19139
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CC
Citations
0
Venue
SPIRE
Last Checked
5 months ago
Abstract
String consensus problems aim at finding a string that minimizes some given distance with respect to an input set of strings. In particular, in the Closest string problem, we are given a set of strings of equal length and a radius $d$. The objective is to find a new string that differs from each input string by at most $d$ substitutions. We study a generalization of this problem where, in addition to substitutions, swaps of adjacent characters are also permitted, each operation incurring a unit cost. Amir et al. showed that this generalized problem is NP-hard, even when only swaps are allowed. In this paper, we show that it is FPT with respect to the parameter $d$. Moreover, we investigate a variant in which the goal is to minimize the sum of distances from the output string to all input strings. For this version, we present a polynomial-time algorithm.
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