Title :
Learning to solve PP-attachment ambiguities in natural language processing through neural networks
Author :
Apolloni, Bruno ; Mauri, Giancarlo ; Trevisson, Cristina ; Valota, Paolo ; Zanaboni, Anna Maria
Author_Institution :
Dipartimento di Sci. dell´´Inf., Milano Univ., Italy
Abstract :
A technique is proposed, based on neural networks for dealing with a particular problem of syntactical ambiguity in the process of building the syntactical tree of an Italian sentence, namely the PP-attachment problem. The neural network was used as a daemon for a top-down parser, when it faced multiple entries in the parsing table. The network was trained to solve PP-attachment ambiguities by the well known algorithm for error back-propagation. What is new is the knowledge representation technique in the network, which has been designed to represent the relevant pieces of information about the constituents of the sentence. Performance results are reported and discussed, together with future perspectives.<>
Keywords :
backpropagation; computational linguistics; knowledge representation; natural languages; neural nets; Italian sentence; PP-attachment ambiguities; PP-attachment problem; daemon; error back-propagation; future perspectives; knowledge representation technique; multiple entries; natural language processing; neural networks; parsing table; syntactical ambiguity; syntactical tree; top-down parser; Guidelines; Instruments; Intelligent networks; Knowledge representation; Natural language processing; Neural networks; Production;
Conference_Titel :
CompEuro '92 . 'Computer Systems and Software Engineering',Proceedings.
Conference_Location :
The Hague, Netherlands
Print_ISBN :
0-8186-2760-3
DOI :
10.1109/CMPEUR.1992.218509