DocumentCode :
2743436
Title :
Can recurrent neural networks learn natural language grammars?
Author :
Lawrence, Steve ; Giles, Lee C. ; Fong, Santliway
Author_Institution :
NEC Res. Inst., Princeton, NJ, USA
Volume :
4
fYear :
1996
fDate :
3-6 Jun 1996
Firstpage :
1853
Abstract :
Recurrent neural networks are complex parametric dynamic systems that can exhibit a wide range of different behavior. We consider the task of grammatical inference with recurrent neural networks. Specifically, we consider the task of classifying natural language sentences as grammatical or ungrammatical: can a recurrent neural network be made to exhibit the same kind of discriminatory power which is provided by the principles and parameters linguistic framework, or government and binding theory? We attempt to train a network, without the bifurcation into learned vs. innate components assumed by Chomsky, to produce the same judgments as native speakers on sharply grammatical/ungrammatical data. We consider how a recurrent neural network could possess linguistic capability, and investigate the properties of Elman, Narendra and Parthasarathy (N&P) and Williams and Zipser (W&Z) recurrent networks, and Frasconi-Gori-Soda (FGS) locally recurrent networks in this setting. We show that both Elman and W&Z recurrent neural networks are able to learn an appropriate grammar
Keywords :
backpropagation; grammars; natural languages; recurrent neural nets; English language; backpropagation; gardient descent method; grammars; grammatical inference; learning; linguistic framework; natural language; recurrent neural networks; Automata; Bifurcation; Computer architecture; Computer networks; Government; Hidden Markov models; National electric code; Natural languages; Recurrent neural networks; Stochastic processes;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1996., IEEE International Conference on
Conference_Location :
Washington, DC
Print_ISBN :
0-7803-3210-5
Type :
conf
DOI :
10.1109/ICNN.1996.549183
Filename :
549183
Link To Document :
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