Title
A Corpus-Based Connectionist Architecture For Large-Scale Natural Language Parsing
Abstract
We describe a deterministic shift-reduce parsing model that combines the advantages of connectionism with those of traditional symbolic models for parsing realistic sub-domains of natural language. It is a modular system that learns to annotate natural language texts with syntactic structure. The parser acquires its linguistic knowledge directly from pre-parsed sentence examples extracted from an annotated corpus. The connectionist modules enable the automatic learning of linguistic constraints and provide a distributed representation of linguistic information that exhibits tolerance to grammatical variation. The inputs and outputs of the connectionist modules represent symbolic information which can be easily manipulated and interpreted and provide the basis for organizing the parse. Performance is evaluated using labelled precision and recall. (For a test set of 4128 words, precision and recall of 75% and 69%, respectively, were achieved.) The work presented represents a significant step towards demonstrating that broad coverage parsing of natural language can be achieved with simple hybrid connectionist architectures which approximate shift-reduce parsing behaviours. Crucially, the model is adaptable to the grammatical framework of the training corpus used and so is not predisposed to a particular grammatical formalism.
Year
DOI
Venue
2002
10.1080/09540090210162074
CONNECTION SCIENCE
Keywords
Field
DocType
connectionist networks, hybrid architectures, natural language processing, deterministic shift-reduce parsing, corpus linguistics, treebank grammar
Top-down parsing language,Top-down parsing,S-attributed grammar,Computer science,Bottom-up parsing,Natural language,Natural language processing,Artificial intelligence,Parsing,Parser combinator,Grammatical Framework
Journal
Volume
Issue
ISSN
14
2
0954-0091
Citations 
PageRank 
References 
4
0.48
27
Authors
3
Name
Order
Citations
PageRank
Jonathan A. Tepper1152.44
Heather M. Powell2102.25
Dominic Palmer-Brown.314024.20