Enhancing Adaptive Behavioral Interventions with LLM Inference from Participant-Described States
Journal:
arXiv
Published Date:
Jul 5, 2025
Abstract
The use of reinforcement learning (RL) methods to support health behavior
change via personalized and just-in-time adaptive interventions is of
significant interest to health and behavioral science researchers focused on
problems such as smoking cessation support and physical activity promotion.
However, RL methods are often applied to these domains using a small collection
of context variables to mitigate the significant data scarcity issues that
arise from practical limitations on the design of adaptive intervention trials.
In this paper, we explore an approach to significantly expanding the state
space of an adaptive intervention without impacting data efficiency. The
proposed approach enables intervention participants to provide natural language
descriptions of aspects of their current state. It then leverages inference
with pre-trained large language models (LLMs) to better align the policy of a
base RL method with these state descriptions. To evaluate our method, we
develop a novel physical activity intervention simulation environment that
generates text-based state descriptions conditioned on latent state variables
using an auxiliary LLM. We show that this approach has the potential to
significantly improve the performance of online policy learning methods.