DocumentCode
2991292
Title
HIERtalker: a default hierarchy of high order neural networks that learns to read English aloud
Author
An, Z.G. ; Mniszewski, S.M. ; Lee, Y.C. ; Papcun, G. ; Doolen, G.D.
Author_Institution
Los Alamos Nat. Lab., NM, USA
fYear
1988
fDate
14-18 Mar 1988
Firstpage
388
Abstract
Summary form only given. The authors proposed and tested a learning procedure, based on a default hierarchy of high-order neural networks, which exhibited an enhanced capability of generalization and a good efficiency. This architecture is suitable for learning regularities embedded in a stream of information with inherent long range correlations. When applied to the conversion of English works to phonemes, a simulator of such a hierarchy, HIERtalker, achieved an accuracy of typically 99% for the words in the training set, and 96% for new words. Also, HIERtalker used considerably less computer time than NETtalk did. The Hebbian learning rule without any error corrections was also used
Keywords
learning systems; linguistics; neural nets; speech synthesis; HIERtalker; Hebbian learning rule; default hierarchy; learning procedure; neural networks; Computer languages; Drives; Error correction; Genetics; Laboratories; Logic testing; Natural languages; Neural networks; Speech coding; Writing;
fLanguage
English
Publisher
ieee
Conference_Titel
Artificial Intelligence Applications, 1988., Proceedings of the Fourth Conference on
Conference_Location
San Diego, CA
Print_ISBN
0-8186-0837-4
Type
conf
DOI
10.1109/CAIA.1988.196136
Filename
196136
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