Large-Scale Domain Adaptation via Teacher-Student Learning

17 Aug 2017 Jinyu Li Michael L. Seltzer Xi Wang Rui Zhao Yifan Gong

High accuracy speech recognition requires a large amount of transcribed data for supervised training. In the absence of such data, domain adaptation of a well-trained acoustic model can be performed, but even here, high accuracy usually requires significant labeled data from the target domain... (read more)

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