Beyond Feature Fusion: Contextual Bayesian PEFT for Multimodal Uncertainty Estimation
About
We introduce CoCo-LoRA, a multimodal, uncertainty-aware parameter-efficient fine-tuning method for text prediction tasks accompanied by audio context. Existing PEFT approaches such as LoRA are efficient but typically deterministic, while recent Bayesian low-rank adapters model uncertainty in a lightweight way yet remain largely unimodal and condition uncertainty primarily on internal text features. This leaves them poorly equipped to reflect uncertainty driven by external acoustic factors such as background noise, channel variability, or speaking style, which can materially affect reliability in speech-centered applications. CoCo-LoRA addresses this gap by conditioning a contextual variational posterior in the low-rank space on both local text-derived adapter features and an audio-derived context signal. A pooled audio embedding is projected once into a shared context space and then adapted through lightweight layer-wise heads, enabling global-to-local, depth-specific modulation of the adapter uncertainty and update without high-dimensional multimodal fusion. Stochasticity is confined to a compact latent component in the rank space, preserving PEFT scalability while producing audio-sensitive, heteroscedastic uncertainty. Based on our evaluations across diverse tasks and backbone combinations, CoCo-LoRA consistently matches or outperforms text-only PEFT and conventional feature-fusion transfer baselines, particularly on high-coverage labels where reliable adaptation is critical. The results indicate that using audio as a contextual uncertainty signal, rather than as a fused feature stream, provides a robust and parameter-efficient alternative for multimodal low-resource prediction.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Anger prediction | Parent data segment-level 5-fold cross-validation | AUC90.92 | 32 | |
| Cohesion prediction | Parent data segment-level 5-fold cross-validation | AUC81.87 | 32 | |
| Criticism prediction | Parent data segment-level 5-fold cross-validation | AUC93.46 | 32 | |
| Fear prediction | Parent data segment-level 5-fold cross-validation | AUC (Fear)89.94 | 32 | |
| Joy prediction | Parent data segment-level 5-fold cross-validation | AUC (%)92.17 | 32 | |
| Neutral state prediction | Parent data segment-level 5-fold cross-validation | AUC81.35 | 32 | |
| Objective trait prediction | Parent data segment-level 5-fold cross-validation | AUC91.94 | 32 | |
| Overinclude prediction | Parent data segment-level 5-fold cross-validation | AUC85.93 | 32 | |
| Sadness prediction | Parent data segment-level 5-fold cross-validation | AUC91.52 | 32 | |
| segment-level prediction | offspring 5-fold (val) | Sentiment Score95.06 | 32 |