Training-Free Bayesianization for Low-Rank Adapters of Large Language Models

Neural Information Processing Systems 

Estimating the uncertainty of responses from Large Language Models (LLMs) remains a critical challenge. While recent Bayesian methods have demonstrated effectiveness in quantifying uncertainty through low-rank weight updates, they typically require complex fine-tuning or post-training procedures.