Efficient Weight factorization for Multilingual Speech Recognition
- URL: http://arxiv.org/abs/2105.03010v1
- Date: Fri, 7 May 2021 00:12:02 GMT
- Title: Efficient Weight factorization for Multilingual Speech Recognition
- Authors: Ngoc-Quan Pham, Tuan-Nam Nguyen, Sebastian Stueker, Alexander Waibel
- Abstract summary: End-to-end multilingual speech recognition involves using a single model training on a compositional speech corpus including many languages.
Due to the fact that each language in the training data has different characteristics, the shared network may struggle to optimize for all various languages simultaneously.
We propose a novel multilingual architecture that targets the core operation in neural networks: linear transformation functions.
- Score: 67.00151881207792
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: End-to-end multilingual speech recognition involves using a single model
training on a compositional speech corpus including many languages, resulting
in a single neural network to handle transcribing different languages. Due to
the fact that each language in the training data has different characteristics,
the shared network may struggle to optimize for all various languages
simultaneously. In this paper we propose a novel multilingual architecture that
targets the core operation in neural networks: linear transformation functions.
The key idea of the method is to assign fast weight matrices for each language
by decomposing each weight matrix into a shared component and a language
dependent component. The latter is then factorized into vectors using rank-1
assumptions to reduce the number of parameters per language. This efficient
factorization scheme is proved to be effective in two multilingual settings
with $7$ and $27$ languages, reducing the word error rates by $26\%$ and $27\%$
rel. for two popular architectures LSTM and Transformer, respectively.
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