How Auditory Knowledge in LLM Backbones Shapes Audio Language Models: A Holistic Evaluation
arXiv cs.CL / 3/20/2026
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Key Points
- The paper investigates how auditory knowledge is encoded in LLM backbones through text-only pre-training and its impact on downstream LALM performance.
- It uses three evaluation settings: direct probing on AKB-2000, cascade evaluation using text descriptions from an audio captioner, and audio-grounded evaluation by fine-tuning LLMs into LALMs with an audio encoder.
- The findings show substantial variation in auditory knowledge across model families and a strong correlation between text-only results and audio performance.
- The work provides empirical grounding for understanding LLMs in audio research and offers guidance for designing and evaluating large audio language models.
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