A first-pass decoding strategy for LSTM language models in LVCSR recombines hypotheses on the last two words before lattice rescoring to achieve competitive results on Hub5'00 and Librispeech with better-than-real-time runtime.
Noise-contrastive estim ation of unnormalized statistical models, with applications to nat ural im- age statistics,
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LSTM Language Models for LVCSR in First-Pass Decoding and Lattice-Rescoring
A first-pass decoding strategy for LSTM language models in LVCSR recombines hypotheses on the last two words before lattice rescoring to achieve competitive results on Hub5'00 and Librispeech with better-than-real-time runtime.