Approximate string matching with compressed indexes

Oliveira, A. L.; Navarro G.; Morales P.

Abstract

A compressed full-text self-index for a text T is a data structure requiring reduced space and able to search for patterns P in T. It can also reproduce any substring of T, thus actually replacing T. Despite the recent explosion of interest on compressed indexes, there has not been much progress on functionalities beyond the basic exact search. In this paper we focus on indexed approximate string matching (ASM), which is of great interest, say, in bioinformatics. We study ASM algorithms for Lempel-Ziv compressed indexes and for compressed suffix trees/arrays. Most compressed self-indexes belong to one of these classes. We start by adapting the classical method of partitioning into exact search to self-indexes, and optimize it over a representative of either class of self-index. Then, we show that a Lempel-Ziv index can be seen as an extension of the classical q-samples index. We give new insights on this type of index, which can be of independent interest, and then apply them to a Lempel-Ziv index. Finally, we improve hierarchical verification, a successful technique for sequential searching, so as to extend the matches of pattern pieces to the left or right. Most compressed suffix trees/arrays support the required bidirectionality, thus enabling the implementation of the improved technique. In turn, the improved verification largely reduces the accesses to the text, which are expensive in self-indexes. We show experimentally that our algorithms are competitive and provide useful space-time tradeoffs compared to classical indexes. © 2009 by the authors.

Más información

Título según SCOPUS: Approximate string matching with compressed indexes
Título de la Revista: ALGORITHMS
Volumen: 2
Número: 3
Editorial: MDPI
Fecha de publicación: 2009
Página de inicio: 1105
Página final: 1136
Idioma: eng
URL: http://www.scopus.com/inward/record.url?eid=2-s2.0-78449269708&partnerID=q2rCbXpz
DOI:

10.3390/a2031105

Notas: SCOPUS