Aspects of Pattern-Matching in Data-Oriented Parsing
摘要
Data-Oriented Parsing (dop) ranks among the best parsing schemes, pairing state-of-the art parsing accuracy to the psycholinguistic insight that larger chunks of syntactic structures are relevant grammatical and probabilistic units. Parsing with the dop-model, however, seems to involve a lot of CPU cycles and a considerable amount of double work, brought on by the concept of multiple derivations, which is necessary for probabilistic processing, but which is not convincingly related to a proper linguistic backbone. It is however possible to re-interpret the dop-model as a pattern-matching model, which tries to maximize the size of the substructures that construct the parse, rather than the probability of the parse. By emphasizing this memory-based aspect of the dop-model, it is possible to do away with multiple derivations, opening up possibilities for efficient Viterbi-style optimizations, while still retaining acceptable parsing accuracy through enhanced context-sensitivity.
引用
@article{arxiv.cs/0008014,
title = {Aspects of Pattern-Matching in Data-Oriented Parsing},
author = {Guy De Pauw},
journal= {arXiv preprint arXiv:cs/0008014},
year = {2007}
}
备注
7 pages, 3 figures