A Recurrent Neural Network for Word Identification from Continuous Phoneme Strings

Part of Advances in Neural Information Processing Systems 3 (NIPS 1990)

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Authors

Robert Allen, Candace Kamm

Abstract

A neural network architecture was designed for locating word boundaries and identifying words from phoneme sequences. This architecture was tested in three sets of studies. First, a highly redundant corpus with a restricted vocabulary was generated and the network was trained with a limited number of phonemic variations for the words in the corpus. Tests of network performance on a transfer set yielded a very low error rate. In a second study, a network was trained to identify words from expert transcriptions of speech. On a transfer test, error rate for correct simultaneous identification of words and word boundaries was 18%. The third study used the output of a phoneme classifier as the input to the word and word boundary identification network. The error rate on a transfer test set was 49% for this task. Overall, these studies provide a first step at identifying words in connected discourse with a neural network.