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Main Authors: Morais, Giovana, Fuentes, Magdalena
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.20641
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author Morais, Giovana
Fuentes, Magdalena
author_facet Morais, Giovana
Fuentes, Magdalena
contents Audio Large Language Models (Audio LLMs) enable human-like conversation about music, yet it is unclear if they are truly listening to the audio or just using textual reasoning, as recent benchmarks suggest. This paper investigates this issue by quantifying the contribution of each modality to a model's output. We adapt the MM-SHAP framework, a performance-agnostic score based on Shapley values that quantifies the relative contribution of each modality to a model's prediction. We evaluate two models on the MuChoMusic benchmark and find that the model with higher accuracy relies more on text to answer questions, but further inspection shows that even if the overall audio contribution is low, models can successfully localize key sound events, suggesting that audio is not entirely ignored. Our study is the first application of MM-SHAP to Audio LLMs and we hope it will serve as a foundational step for future research in explainable AI and audio.
format Preprint
id arxiv_https___arxiv_org_abs_2509_20641
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Investigating Modality Contribution in Audio LLMs for Music
Morais, Giovana
Fuentes, Magdalena
Machine Learning
Sound
Audio Large Language Models (Audio LLMs) enable human-like conversation about music, yet it is unclear if they are truly listening to the audio or just using textual reasoning, as recent benchmarks suggest. This paper investigates this issue by quantifying the contribution of each modality to a model's output. We adapt the MM-SHAP framework, a performance-agnostic score based on Shapley values that quantifies the relative contribution of each modality to a model's prediction. We evaluate two models on the MuChoMusic benchmark and find that the model with higher accuracy relies more on text to answer questions, but further inspection shows that even if the overall audio contribution is low, models can successfully localize key sound events, suggesting that audio is not entirely ignored. Our study is the first application of MM-SHAP to Audio LLMs and we hope it will serve as a foundational step for future research in explainable AI and audio.
title Investigating Modality Contribution in Audio LLMs for Music
topic Machine Learning
Sound
url https://arxiv.org/abs/2509.20641