2020
DOI: 10.48550/arxiv.2006.05129
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On the Effectiveness of Neural Text Generation based Data Augmentation for Recognition of Morphologically Rich Speech

Balázs Tarján,
György Szaszák,
Tibor Fegyó
et al.

Abstract: Advanced neural network models have penetrated Automatic Speech Recognition (ASR) in recent years, however, in language modeling many systems still rely on traditional Back-off N-gram Language Models (BNLM) partly or entirely. The reason for this are the high cost and complexity of training and using neural language models, mostly possible by adding a second decoding pass (rescoring). In our recent work we have significantly improved the online performance of a conversational speech transcription system by tra… Show more

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