Grammar compression with probabilistic context-free grammar
March 18, 2020 Β· Declared Dead Β· π Data Compression Conference
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Authors
Hiroaki Naganuma, Diptarama Hendrian, Ryo Yoshinaka, Ayumi Shinohara, Naoki Kobayashi
arXiv ID
2003.08097
Category
cs.DS: Data Structures & Algorithms
Citations
2
Venue
Data Compression Conference
Last Checked
4 months ago
Abstract
We propose a new approach for universal lossless text compression, based on grammar compression. In the literature, a target string $T$ has been compressed as a context-free grammar $G$ in Chomsky normal form satisfying $L(G) = \{T\}$. Such a grammar is often called a \emph{straight-line program} (SLP). In this paper, we consider a probabilistic grammar $G$ that generates $T$, but not necessarily as a unique element of $L(G)$. In order to recover the original text $T$ unambiguously, we keep both the grammar $G$ and the derivation tree of $T$ from the start symbol in $G$, in compressed form. We show some simple evidence that our proposal is indeed more efficient than SLPs for certain texts, both from theoretical and practical points of view.
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