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Main Authors: Hsu, Ming-Hao, Zhang, Xueyao, Tian, Xiaohai, Zhang, Jun, Wu, Zhizheng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.01502
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author Hsu, Ming-Hao
Zhang, Xueyao
Tian, Xiaohai
Zhang, Jun
Wu, Zhizheng
author_facet Hsu, Ming-Hao
Zhang, Xueyao
Tian, Xiaohai
Zhang, Jun
Wu, Zhizheng
contents Recent advancements in Large Speech-Language Models have significantly bridged the gap between acoustic signals and linguistic understanding. However, a persistent performance disparity remains in speech-based input tasks compared to direct text inference. In this paper, we investigate the dynamic roots of this modality gap beyond static geometric alignment, analyzing how speech and text representations evolve layer-by-layer. We evaluate four open-weight end-to-end models on SpeechMMLU and VoiceBench BBH. Using cross-layer CKA analysis with speech-text token alignment, we find that speech representations exhibit a broad cross-layer alignment band, attributable to the redundant nature of speech where semantic content spans multiple frames. We show that these alignment patterns are structurally stable across different analysis configurations. Crucially, simple statistical calibration is insufficient and can be detrimental when applied at the input layer, indicating that the modality gap is not a mere distribution shift. Overall, our results suggest that the bottleneck lies in condensing redundant speech into stable late-layer decisions, motivating future solutions that operate at the token or temporal granularity instead of feature-level matching.
format Preprint
id arxiv_https___arxiv_org_abs_2603_01502
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Anatomy of the Modality Gap: Dissecting the Internal States of End-to-End Speech LLMs
Hsu, Ming-Hao
Zhang, Xueyao
Tian, Xiaohai
Zhang, Jun
Wu, Zhizheng
Computation and Language
Audio and Speech Processing
Recent advancements in Large Speech-Language Models have significantly bridged the gap between acoustic signals and linguistic understanding. However, a persistent performance disparity remains in speech-based input tasks compared to direct text inference. In this paper, we investigate the dynamic roots of this modality gap beyond static geometric alignment, analyzing how speech and text representations evolve layer-by-layer. We evaluate four open-weight end-to-end models on SpeechMMLU and VoiceBench BBH. Using cross-layer CKA analysis with speech-text token alignment, we find that speech representations exhibit a broad cross-layer alignment band, attributable to the redundant nature of speech where semantic content spans multiple frames. We show that these alignment patterns are structurally stable across different analysis configurations. Crucially, simple statistical calibration is insufficient and can be detrimental when applied at the input layer, indicating that the modality gap is not a mere distribution shift. Overall, our results suggest that the bottleneck lies in condensing redundant speech into stable late-layer decisions, motivating future solutions that operate at the token or temporal granularity instead of feature-level matching.
title Anatomy of the Modality Gap: Dissecting the Internal States of End-to-End Speech LLMs
topic Computation and Language
Audio and Speech Processing
url https://arxiv.org/abs/2603.01502