Revisiting the Folklore Algorithm for Random Access to Grammar-Compressed Strings
July 11, 2024 Β· Declared Dead Β· π SPIRE
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Authors
Alan M. Cleary, Joseph Winjum, Jordan Dood, Shunsuke Inenaga
arXiv ID
2407.08190
Category
cs.DS: Data Structures & Algorithms
Citations
1
Venue
SPIRE
Last Checked
4 months ago
Abstract
Grammar-based compression is a widely-accepted model of string compression that allows for efficient and direct manipulations on the compressed data. Most, if not all, such manipulations rely on the primitive \emph{random access} queries, a task of quickly returning the character at a specified position of the original uncompressed string without explicit decompression. While there are advanced data structures for random access to grammar-compressed strings that guarantee theoretical query time and space bounds, little has been done for the \emph{practical} perspective of this important problem. In this paper, we revisit a well-known folklore random access algorithm for grammars in the Chomsky normal form, modify it to work directly on general grammars, and show that this modified version is fast and memory efficient in practice.
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