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      Phoneme recognition in TIMIT with BLSTM-CTC

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          Abstract

          We compare the performance of a recurrent neural network with the best results published so far on phoneme recognition in the TIMIT database. These published results have been obtained with a combination of classifiers. However, in this paper we apply a single recurrent neural network to the same task. Our recurrent neural network attains an error rate of 24.6%. This result is not significantly different from that obtained by the other best methods, but they rely on a combination of classifiers for achieving comparable performance.

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          Author and article information

          Journal
          21 April 2008
          Article
          0804.3269
          1332f6a9-141d-4193-a4c4-8cd6757492bc

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          IDSIA-04-08
          8 pages
          cs.CL cs.NE

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