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Simplified Self-Attention for Transformer-based End-to-End Speech Recognition (2005.10463v2)

Published 21 May 2020 in cs.SD, cs.CL, and eess.AS

Abstract: Transformer models have been introduced into end-to-end speech recognition with state-of-the-art performance on various tasks owing to their superiority in modeling long-term dependencies. However, such improvements are usually obtained through the use of very large neural networks. Transformer models mainly include two submodules - position-wise feedforward layers and self-attention (SAN) layers. In this paper, to reduce the model complexity while maintaining good performance, we propose a simplified self-attention (SSAN) layer which employs FSMN memory block instead of projection layers to form query and key vectors for transformer-based end-to-end speech recognition. We evaluate the SSAN-based and the conventional SAN-based transformers on the public AISHELL-1, internal 1000-hour and 20,000-hour large-scale Mandarin tasks. Results show that our proposed SSAN-based transformer model can achieve over 20% relative reduction in model parameters and 6.7% relative CER reduction on the AISHELL-1 task. With impressively 20% parameter reduction, our model shows no loss of recognition performance on the 20,000-hour large-scale task.

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Authors (4)
  1. Haoneng Luo (7 papers)
  2. Shiliang Zhang (132 papers)
  3. Ming Lei (52 papers)
  4. Lei Xie (337 papers)
Citations (31)

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