AI RESEARCH

Context-Aware Hospitalization Forecasting Evaluations for Decision Support using LLMs

arXiv CS.AI

ArXi:2604.23949v1 Announce Type: new Medical and public health experts must make real-time resource decisions, such as expanding hospital bed capacity, based on projected hospitalization trends during large-scale healthcare disruptions (e.g., operational failures or pandemics). Forecasting models can assist in this task by analyzing large volumes of resource-related data at the facility level, but they must be reliable for decision-making under real-world data conditions. Recent work shows that large language models (LLMs) can incorporate richer forms of context into numerical forecasting.