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Is Smaller Always Faster? Tradeoffs in Compressing Self-Supervised Speech Transformers

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arxiv 2211.09949 v4 pith:GQDJMNGW submitted 2022-11-17 cs.CL cs.LGcs.SDeess.AS

Is Smaller Always Faster? Tradeoffs in Compressing Self-Supervised Speech Transformers

classification cs.CL cs.LGcs.SDeess.AS
keywords compressionself-supervisedspeechdeploymentmethodmetricspracticalpruning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Transformer-based self-supervised models have achieved remarkable success in speech processing, but their large size and high inference cost present significant challenges for real-world deployment. While numerous compression techniques have been proposed, inconsistent evaluation metrics make it difficult to compare their practical effectiveness. In this work, we conduct a comprehensive study of four common compression methods, including weight pruning, head pruning, low-rank approximation, and knowledge distillation on self-supervised speech Transformers. We evaluate each method under three key metrics: parameter count, multiply-accumulate operations, and real-time factor. Results show that each method offers distinct advantages. In addition, we contextualize recent compression techniques, comparing DistilHuBERT, FitHuBERT, LightHuBERT, ARMHuBERT, and STaRHuBERT under the same framework, offering practical guidance on compression for deployment.

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  1. An Exploration of Mamba for Speech Self-Supervised Models

    cs.CL 2025-06 unverdicted novelty 7.0

    Mamba-based HuBERT models match or exceed Transformer versions on speech tasks while using far less compute for long sequences and streaming ASR.