← Back to archive day

Cross-Modal Bayesian Low-Rank Adaptation for Uncertainty-Aware Multimodal Learning

Habibeh Naderi, Behrouz Haji Soleimani, Stan Matwin

36

Recommendation Score

breakthrough🔴 AdvancedMultimodalMultimodal UnderstandingModel CompressionSystemBest for builders

Research context

Primary field

Multimodal

Systems that connect text, vision, audio, and other modalities.

Topics

Multimodal Understanding, Model Compression

Paper type

System

Best for

Best for builders

arXiv categories

cs.LGcs.AIcs.LG

Why It Matters

CALIBER introduces Bayesian low-rank adaptation for uncertainty-aware multimodal learning, enabling robust, efficient fine-tuning in low-resource settings—essential for builders deploying reliable multimodal systems under data scarcity.

Abstract

Large pre-trained language models are increasingly adapted to downstream tasks using parameter-efficient fine-tuning (PEFT), but existing PEFT methods are typically deterministic and unimodal, making them poorly suited for low-resource multimodal settings where predictive uncertainty and cross-modal reliability both matter. We introduce CALIBER (Context-Aware Low-rank Inference with Bayesian Embedding Regularization), a multimodal uncertainty-aware PEFT framework for audio-text learning. CALIBER extends Bayesian low-rank adaptation by conditioning the variational posterior in the adapter space on per-layer, token-level text-audio cross-attention. Specifically, text-derived low-rank features attend to frame-level audio embeddings to produce localized acoustic context, which then modulates the mean and variance of a compact stochastic latent matrix within the rank-$r$ adapter space. This design treats audio not only as an additional feature source, but as a contextual reliability signal that shapes both adaptation and confidence. By confining stochasticity to a low-dimensional latent component, CALIBER retains the computational efficiency and scalability of PEFT while enabling heteroscedastic multimodal uncertainty estimation. Experimental results across diverse text and audio backbones show that CALIBER consistently matches or improves upon text-only Bayesian PEFT and conventional multimodal transfer-learning baselines, with token-level cross-attention yielding the most consistent gains. Our findings demonstrate that localized cross-modal conditioning is an effective and lightweight mechanism for uncertainty-aware multimodal adaptation.

Published April 17, 2026
© 2026 A2A.pub — AI to Action. From papers to practice, daily.
Summaries are AI-assistedPrivacyTerms