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Efficient Knowledge Distillation for RNN-Transducer Models (2011.06110v1)

Published 11 Nov 2020 in eess.AS and cs.SD

Abstract: Knowledge Distillation is an effective method of transferring knowledge from a large model to a smaller model. Distillation can be viewed as a type of model compression, and has played an important role for on-device ASR applications. In this paper, we develop a distillation method for RNN-Transducer (RNN-T) models, a popular end-to-end neural network architecture for streaming speech recognition. Our proposed distillation loss is simple and efficient, and uses only the "y" and "blank" posterior probabilities from the RNN-T output probability lattice. We study the effectiveness of the proposed approach in improving the accuracy of sparse RNN-T models obtained by gradually pruning a larger uncompressed model, which also serves as the teacher during distillation. With distillation of 60% and 90% sparse multi-domain RNN-T models, we obtain WER reductions of 4.3% and 12.1% respectively, on a noisy FarField eval set. We also present results of experiments on LibriSpeech, where the introduction of the distillation loss yields a 4.8% relative WER reduction on the test-other dataset for a small Conformer model.

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Authors (6)
  1. Sankaran Panchapagesan (6 papers)
  2. Daniel S. Park (30 papers)
  3. Chung-Cheng Chiu (48 papers)
  4. Yuan Shangguan (25 papers)
  5. Qiao Liang (26 papers)
  6. Alexander Gruenstein (7 papers)
Citations (50)