Wheeler maps

Motivated by challenges in pangenomic read alignment, we propose a generalization of Wheeler graphs that we call Wheeler maps. A Wheeler map stores a text $T[1..n]$ and an assignment of tags to the characters of $T$ such that we can preprocess a pattern $P[1..m]$ and then, given $i$ and $j$, quickly...

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Hauptverfasser: Baláz, Andrej, Gagie, Travis, Goga, Adrián, Heumos, Simon, Navarro, Gonzalo, Petescia, Alessia, Sirén, Jouni
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Sprache:eng
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Zusammenfassung:Motivated by challenges in pangenomic read alignment, we propose a generalization of Wheeler graphs that we call Wheeler maps. A Wheeler map stores a text $T[1..n]$ and an assignment of tags to the characters of $T$ such that we can preprocess a pattern $P[1..m]$ and then, given $i$ and $j$, quickly return all the distinct tags labeling the first characters of the occurrences of $P[i..j]$ in $T$. For the applications that most interest us, characters with long common contexts are likely to have the same tag, so we consider the number $t$ of runs in the list of tags sorted by their characters' positions in the Burrows-Wheeler Transform (BWT) of $T$. We show how, given a straight-line program with $g$ rules for $T$, we can build an $O(g + r + t)$-space Wheeler map, where $r$ is the number of runs in the BWT of $T$, with which we can preprocess a pattern $P[1..m]$ in $O(m \log n)$ time and then return the $k$ distinct tags for $P[i..j]$ in optimal $O(k)$ time for any given $i$ and $j$. We show various further results related to prioritizing the most frequent tags.
DOI:10.48550/arxiv.2308.09836