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Main Authors: Wang, Yiming, Yang, Yi, Yuan, Jiahong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.04814
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author Wang, Yiming
Yang, Yi
Yuan, Jiahong
author_facet Wang, Yiming
Yang, Yi
Yuan, Jiahong
contents Phonetic normalization plays a crucial role in speech recognition and analysis, ensuring the comparability of features derived from raw audio data. However, in the current paradigm of fine-tuning pre-trained large transformer models, phonetic normalization is not deemed a necessary step; instead, it is implicitly executed within the models. This study investigates the normalization process within transformer models, especially wav2vec 2.0. Through a comprehensive analysis of embeddings from models fine-tuned for various tasks, our results demonstrate that fine-tuning wav2vec 2.0 effectively achieves phonetic normalization by selectively suppressing task-irrelevant information. We found that models fine-tuned for multiple tasks retain information for both tasks without compromising performance, and that suppressing task-irrelevant information is not necessary for effective classification. These findings provide new insights into how phonetic normalization can be flexibly achieved in speech models and how it is realized in human speech perception.
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publishDate 2025
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spellingShingle Normalization through Fine-tuning: Understanding Wav2vec 2.0 Embeddings for Phonetic Analysis
Wang, Yiming
Yang, Yi
Yuan, Jiahong
Computation and Language
Artificial Intelligence
Phonetic normalization plays a crucial role in speech recognition and analysis, ensuring the comparability of features derived from raw audio data. However, in the current paradigm of fine-tuning pre-trained large transformer models, phonetic normalization is not deemed a necessary step; instead, it is implicitly executed within the models. This study investigates the normalization process within transformer models, especially wav2vec 2.0. Through a comprehensive analysis of embeddings from models fine-tuned for various tasks, our results demonstrate that fine-tuning wav2vec 2.0 effectively achieves phonetic normalization by selectively suppressing task-irrelevant information. We found that models fine-tuned for multiple tasks retain information for both tasks without compromising performance, and that suppressing task-irrelevant information is not necessary for effective classification. These findings provide new insights into how phonetic normalization can be flexibly achieved in speech models and how it is realized in human speech perception.
title Normalization through Fine-tuning: Understanding Wav2vec 2.0 Embeddings for Phonetic Analysis
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2503.04814