Context-Aware Hospitalization Forecasting Evaluations for Decision Support using LLMs
Rhea Makkuni, Ananya Joshi

TL;DR
This paper evaluates how large language models can improve hospitalization forecasting by integrating contextual data into hybrid models, enhancing stability and calibration for healthcare decision-making.
Contribution
It introduces a hybrid pipeline combining LLM-derived signals with structured models, demonstrating improved stability and calibration over classical methods in healthcare forecasting.
Findings
HybridARX outperforms classical ARX in stability and calibration.
Incorporating noisy contextual signals improves forecast reliability.
LLMs are most effective when embedded within structured hybrid models.
Abstract
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. Whereas traditional models rely primarily on temporal context (i.e., past observations), LLMs can also leverage non-temporal public health context such as demographic, geographic, and population-level features. However, it remains unclear how these models should be used to produce stable or decision-relevant predictions in real-world…
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