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Dynamic Data Pruning for Automatic Speech Recognition

Authors :
Xiao, Qiao
Ma, Pingchuan
Fernandez-Lopez, Adriana
Wu, Boqian
Yin, Lu
Petridis, Stavros
Pechenizkiy, Mykola
Pantic, Maja
Mocanu, Decebal Constantin
Liu, Shiwei
Publication Year :
2024

Abstract

The recent success of Automatic Speech Recognition (ASR) is largely attributed to the ever-growing amount of training data. However, this trend has made model training prohibitively costly and imposed computational demands. While data pruning has been proposed to mitigate this issue by identifying a small subset of relevant data, its application in ASR has been barely explored, and existing works often entail significant overhead to achieve meaningful results. To fill this gap, this paper presents the first investigation of dynamic data pruning for ASR, finding that we can reach the full-data performance by dynamically selecting 70% of data. Furthermore, we introduce Dynamic Data Pruning for ASR (DDP-ASR), which offers several fine-grained pruning granularities specifically tailored for speech-related datasets, going beyond the conventional pruning of entire time sequences. Our intensive experiments show that DDP-ASR can save up to 1.6x training time with negligible performance loss.<br />Comment: Accepted to Interspeech 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.18373
Document Type :
Working Paper