CLAIASOct 15, 2025

Closing the Gap Between Text and Speech Understanding in LLMs

arXiv:2510.13632v111 citationsh-index: 50
Originality Incremental advance
AI Analysis

This addresses the data inefficiency problem in adapting LLMs to speech inputs for researchers and practitioners, though it is incremental as it builds on existing cross-modal distillation techniques.

The paper tackles the performance gap between speech-adapted and text-based large language models (LLMs) on language understanding tasks, introducing SALAD, a method that achieves competitive results with a strong open-weight model while using over 10 times less speech data from public corpora.

Large Language Models (LLMs) can be adapted to extend their text capabilities to speech inputs. However, these speech-adapted LLMs consistently underperform their text-based counterparts--and even cascaded pipelines--on language understanding tasks. We term this shortfall the text-speech understanding gap: the performance drop observed when a speech-adapted LLM processes spoken inputs relative to when the original text-based LLM processes the equivalent text. Recent approaches to narrowing this gap either rely on large-scale speech synthesis of text corpora, which is costly and heavily dependent on synthetic data, or on large-scale proprietary speech datasets, which are not reproducible. As a result, there remains a need for more data-efficient alternatives for closing the text-speech understanding gap. In this work, we analyze the gap as driven by two factors: (i) forgetting of text capabilities during adaptation, and (ii) cross-modal misalignment between speech and text. Based on this analysis, we introduce SALAD--Sample-efficient Alignment with Learning through Active selection and cross-modal Distillation--which combines cross-modal distillation with targeted synthetic data to improve alignment while mitigating forgetting. Applied to 3B and 7B LLMs, SALAD achieves competitive performance with a strong open-weight model across broad-domain benchmarks in knowledge, language understanding, and reasoning, while training on over an order of magnitude less speech data from public corpora.

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