Explaining the Attention Mechanism of End-to-End Speech Recognition Using Decision Trees
The attention mechanism has largely improved the performance of end-to-end speech recognition systems. However, the underlying behaviours of attention is not yet clearer. In this study, we use decision trees to explain how the attention mechanism impact itself in speech recognition. The results indi...
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Zusammenfassung: | The attention mechanism has largely improved the performance of end-to-end
speech recognition systems. However, the underlying behaviours of attention is
not yet clearer. In this study, we use decision trees to explain how the
attention mechanism impact itself in speech recognition. The results indicate
that attention levels are largely impacted by their previous states rather than
the encoder and decoder patterns. Additionally, the default attention mechanism
seems to put more weights on closer states, but behaves poorly on modelling
long-term dependencies of attention states. |
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DOI: | 10.48550/arxiv.2110.03879 |