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The Ethereal
Multiple Context-Free Tree Grammars: Lexicalization and Characterization
July 11, 2017 ยท The Ethereal ยท ๐ Theoretical Computer Science
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Authors
Joost Engelfriet, Andreas Maletti, Sebastian Maneth
arXiv ID
1707.03457
Category
cs.FL: Formal Languages
Cross-listed
cs.CL
Citations
6
Venue
Theoretical Computer Science
Last Checked
1 month ago
Abstract
Multiple (simple) context-free tree grammars are investigated, where "simple" means "linear and nondeleting". Every multiple context-free tree grammar that is finitely ambiguous can be lexicalized; i.e., it can be transformed into an equivalent one (generating the same tree language) in which each rule of the grammar contains a lexical symbol. Due to this transformation, the rank of the nonterminals increases at most by 1, and the multiplicity (or fan-out) of the grammar increases at most by the maximal rank of the lexical symbols; in particular, the multiplicity does not increase when all lexical symbols have rank 0. Multiple context-free tree grammars have the same tree generating power as multi-component tree adjoining grammars (provided the latter can use a root-marker). Moreover, every multi-component tree adjoining grammar that is finitely ambiguous can be lexicalized. Multiple context-free tree grammars have the same string generating power as multiple context-free (string) grammars and polynomial time parsing algorithms. A tree language can be generated by a multiple context-free tree grammar if and only if it is the image of a regular tree language under a deterministic finite-copying macro tree transducer. Multiple context-free tree grammars can be used as a synchronous translation device.
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