CLFeb 13, 2025

BrainWavLM: Fine-tuning Speech Representations with Brain Responses to Language

arXiv:2502.08866v19 citationsh-index: 8
Originality Incremental advance
AI Analysis

This work addresses the challenge of bridging artificial and biological representations of semantics in neuroscience and AI, offering incremental improvements in brain encoding models.

The researchers tackled the problem of improving speech encoding models that predict brain responses to spoken language by fine-tuning a WavLM-based model with brain data using low-rank adaptation (LoRA), resulting in enhanced average encoding performance with greater stability and improved semantic representations without explicit annotations.

Speech encoding models use auditory representations to predict how the human brain responds to spoken language stimuli. Most performant encoding models linearly map the hidden states of artificial neural networks to brain data, but this linear restriction may limit their effectiveness. In this work, we use low-rank adaptation (LoRA) to fine-tune a WavLM-based encoding model end-to-end on a brain encoding objective, producing a model we name BrainWavLM. We show that fine-tuning across all of cortex improves average encoding performance with greater stability than without LoRA. This improvement comes at the expense of low-level regions like auditory cortex (AC), but selectively fine-tuning on these areas improves performance in AC, while largely retaining gains made in the rest of cortex. Fine-tuned models generalized across subjects, indicating that they learned robust brain-like representations of the speech stimuli. Finally, by training linear probes, we showed that the brain data strengthened semantic representations in the speech model without any explicit annotations. Our results demonstrate that brain fine-tuning produces best-in-class speech encoding models, and that non-linear methods have the potential to bridge the gap between artificial and biological representations of semantics.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes