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Efficient Conformer with Prob-Sparse Attention Mechanism for End-to-EndSpeech Recognition

2021-06-17 04:04:04
Xiong Wang, Sining Sun, Lei Xie, Long Ma

Abstract

End-to-end models are favored in automatic speech recognition (ASR) because of their simplified system structure and superior performance. Among these models, Transformer and Conformer have achieved state-of-the-art recognition accuracy in which self-attention plays a vital role in capturing important global information. However, the time and memory complexity of self-attention increases squarely with the length of the sentence. In this paper, a prob-sparse self-attention mechanism is introduced into Conformer to sparse the computing process of self-attention in order to accelerate inference speed and reduce space consumption. Specifically, we adopt a Kullback-Leibler divergence based sparsity measurement for each query to decide whether we compute the attention function on this query. By using the prob-sparse attention mechanism, we achieve impressively 8% to 45% inference speed-up and 15% to 45% memory usage reduction of the self-attention module of Conformer Transducer while maintaining the same level of error rate.

Abstract (translated)

URL

https://arxiv.org/abs/2106.09236

PDF

https://arxiv.org/pdf/2106.09236.pdf


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