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Main Authors: Zuo, Jialong, Zhang, Guangyan, Fang, Minghui, Ji, Shengpeng, Jiao, Xiaoqi, Li, Jingyu, Guo, Yiwen, Zhao, Zhou
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.00503
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author Zuo, Jialong
Zhang, Guangyan
Fang, Minghui
Ji, Shengpeng
Jiao, Xiaoqi
Li, Jingyu
Guo, Yiwen
Zhao, Zhou
author_facet Zuo, Jialong
Zhang, Guangyan
Fang, Minghui
Ji, Shengpeng
Jiao, Xiaoqi
Li, Jingyu
Guo, Yiwen
Zhao, Zhou
contents Discrete speech representation learning has recently attracted increasing interest in both acoustic and semantic modeling. Existing approaches typically encode 16 kHz waveforms into discrete tokens at a rate of 25 or 50 tokens per second. However, given that speech generally conveys only 2 to 5 words per second, such fine-grained tokenization introduces redundancy and hinders efficiency in downstream training and inference. Moreover, semantic speech representations at this frequency primarily capture phonetic-level information, while semantic understanding may not require such detailed token-level resolution. To address these limitations, we propose an entropy-based dynamic aggregation framework for learning compressed semantic speech representations. A speech language model is first pre-trained via next-token prediction on large-scale unlabeled data to capture frequent token patterns. Predictive entropy is then used to adaptively determine aggregation boundaries, followed by a cross-attention module that fuses information within each segment. By adjusting the entropy threshold, the granularity and compression ratio of the representations can be flexibly controlled. Experiments on ASR, speech-to-text translation, and voice conversion tasks demonstrate that the compressed representations perform on par with or better than dense token sequences, demonstrating the effectiveness of the proposed approach.
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spellingShingle Entropy-based Coarse and Compressed Semantic Speech Representation Learning
Zuo, Jialong
Zhang, Guangyan
Fang, Minghui
Ji, Shengpeng
Jiao, Xiaoqi
Li, Jingyu
Guo, Yiwen
Zhao, Zhou
Computation and Language
Audio and Speech Processing
Discrete speech representation learning has recently attracted increasing interest in both acoustic and semantic modeling. Existing approaches typically encode 16 kHz waveforms into discrete tokens at a rate of 25 or 50 tokens per second. However, given that speech generally conveys only 2 to 5 words per second, such fine-grained tokenization introduces redundancy and hinders efficiency in downstream training and inference. Moreover, semantic speech representations at this frequency primarily capture phonetic-level information, while semantic understanding may not require such detailed token-level resolution. To address these limitations, we propose an entropy-based dynamic aggregation framework for learning compressed semantic speech representations. A speech language model is first pre-trained via next-token prediction on large-scale unlabeled data to capture frequent token patterns. Predictive entropy is then used to adaptively determine aggregation boundaries, followed by a cross-attention module that fuses information within each segment. By adjusting the entropy threshold, the granularity and compression ratio of the representations can be flexibly controlled. Experiments on ASR, speech-to-text translation, and voice conversion tasks demonstrate that the compressed representations perform on par with or better than dense token sequences, demonstrating the effectiveness of the proposed approach.
title Entropy-based Coarse and Compressed Semantic Speech Representation Learning
topic Computation and Language
Audio and Speech Processing
url https://arxiv.org/abs/2509.00503