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Main Authors: Li, Aaron J., Sanchez, Nicolas, Huang, Hao, Dong, Ruijiang, Bains, Jaskaran, Jaradeh, Katrin, Xiang, Zhen, Li, Bo, Liu, Feng, Kornblith, Aaron, Yu, Bin
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.24700
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author Li, Aaron J.
Sanchez, Nicolas
Huang, Hao
Dong, Ruijiang
Bains, Jaskaran
Jaradeh, Katrin
Xiang, Zhen
Li, Bo
Liu, Feng
Kornblith, Aaron
Yu, Bin
author_facet Li, Aaron J.
Sanchez, Nicolas
Huang, Hao
Dong, Ruijiang
Bains, Jaskaran
Jaradeh, Katrin
Xiang, Zhen
Li, Bo
Liu, Feng
Kornblith, Aaron
Yu, Bin
contents Large language models (LLMs) are increasingly deployed, yet their outputs can be highly sensitive to routine, non-adversarial variation in how users phrase queries, a gap not well addressed by existing red-teaming efforts. We propose Green Shielding, a user-centric agenda for building evidence-backed deployment guidance by characterizing how benign input variation shifts model behavior. We operationalize this agenda through the CUE criteria: benchmarks with authentic Context, reference standards and metrics that capture true Utility, and perturbations that reflect realistic variations in the Elicitation of model behavior. Guided by the PCS framework and developed with practicing physicians, we instantiate Green Shielding in medical diagnosis through HealthCareMagic-Diagnosis (HCM-Dx), a benchmark of patient-authored queries, together with structured reference diagnosis sets and clinically grounded metrics for evaluating differential diagnosis lists. We also study perturbation regimes that capture routine input variation and show that prompt-level factors shift model behavior along clinically meaningful dimensions. Across multiple frontier LLMs, these shifts trace out Pareto-like tradeoffs. In particular, neutralization, which removes common user-level factors while preserving clinical content, increases plausibility and yields more concise, clinician-like differentials, but reduces coverage of highly likely and safety-critical conditions. Together, these results show that interaction choices can systematically shift task-relevant properties of model outputs and support user-facing guidance for safer deployment in high-stakes domains. Although instantiated here in medical diagnosis, the agenda extends naturally to other decision-support settings and agentic AI systems.
format Preprint
id arxiv_https___arxiv_org_abs_2604_24700
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Green Shielding: A User-Centric Approach Towards Trustworthy AI
Li, Aaron J.
Sanchez, Nicolas
Huang, Hao
Dong, Ruijiang
Bains, Jaskaran
Jaradeh, Katrin
Xiang, Zhen
Li, Bo
Liu, Feng
Kornblith, Aaron
Yu, Bin
Computation and Language
Artificial Intelligence
Large language models (LLMs) are increasingly deployed, yet their outputs can be highly sensitive to routine, non-adversarial variation in how users phrase queries, a gap not well addressed by existing red-teaming efforts. We propose Green Shielding, a user-centric agenda for building evidence-backed deployment guidance by characterizing how benign input variation shifts model behavior. We operationalize this agenda through the CUE criteria: benchmarks with authentic Context, reference standards and metrics that capture true Utility, and perturbations that reflect realistic variations in the Elicitation of model behavior. Guided by the PCS framework and developed with practicing physicians, we instantiate Green Shielding in medical diagnosis through HealthCareMagic-Diagnosis (HCM-Dx), a benchmark of patient-authored queries, together with structured reference diagnosis sets and clinically grounded metrics for evaluating differential diagnosis lists. We also study perturbation regimes that capture routine input variation and show that prompt-level factors shift model behavior along clinically meaningful dimensions. Across multiple frontier LLMs, these shifts trace out Pareto-like tradeoffs. In particular, neutralization, which removes common user-level factors while preserving clinical content, increases plausibility and yields more concise, clinician-like differentials, but reduces coverage of highly likely and safety-critical conditions. Together, these results show that interaction choices can systematically shift task-relevant properties of model outputs and support user-facing guidance for safer deployment in high-stakes domains. Although instantiated here in medical diagnosis, the agenda extends naturally to other decision-support settings and agentic AI systems.
title Green Shielding: A User-Centric Approach Towards Trustworthy AI
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2604.24700