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Matchtigs: minimum plain text representation of k-mer sets.

Sebastian SchmidtShahbaz KhanJarno N AlankoGiulio Ermanno PibiriAlexandru I Tomescu
Published in: Genome biology (2023)
We propose a polynomial algorithm computing a minimum plain-text representation of k-mer sets, as well as an efficient near-minimum greedy heuristic. When compressing read sets of large model organisms or bacterial pangenomes, with only a minor runtime increase, we shrink the representation by up to 59% over unitigs and 26% over previous work. Additionally, the number of strings is decreased by up to 97% over unitigs and 90% over previous work. Finally, a small representation has advantages in downstream applications, as it speeds up SSHash-Lite queries by up to 4.26× over unitigs and 2.10× over previous work.
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