Decision-Making Under Uncertainty in AI-Enabled Warfare: Implications for Education and Training

模棱两可 认知 军事医学 计算机科学 决策者 心理学 培训(气象学) 海军 控制(管理) 指挥与控制 管理科学 资源配置 军事人员 资源(消歧) 知识管理 应用心理学 风险分析(工程) 决策支持系统 人工智能 运筹学 认知心理学 决策论 急诊分诊台 决策分析 梅德林 认知负荷 数据科学
作者
Rebekah Cole
出处
期刊:Military Medicine [Oxford University Press]
标识
DOI:10.1093/milmed/usag240
摘要

In AI-enabled warfare, military medical officers may be required to make life-and-death decisions when artificial intelligence (AI) outputs are correct, incorrect, or uncertain, often without the time or ability to fully verify them. As modern operations increasingly emphasize decision dominance, AI is becoming more integrated into operational environments. Although its role in command and control has been widely examined, its implications for military medical decision-making remain less defined, creating a potential gap in preparedness. Military medical decisions such as triage, evacuation, and resource allocation are inherently time-sensitive and high-stakes, often occurring in austere environments with incomplete information and competing mission priorities. In these contexts, AI may expand decision options, improve efficiency, and reduce some cognitive burdens, while also introducing complexity related to interpreting outputs, integrating multiple inputs, and calibrating trust in real time. This commentary adopts a dialectical perspective, arguing that AI may both support and complicate decision-making. Rather than eliminating uncertainty, AI redistributes it across three domains: clinical-operational, algorithmic, and relational. This redistribution introduces risks, including miscalibrated reliance, cognitive strain from competing inputs, limited transparency, and ambiguity in accountability. These dynamics raise important considerations for military medical education. Foundational training should prepare clinicians to interpret AI-supported information, integrate data sources, and maintain judgment under uncertainty. Ultimately, readiness will depend not only on individual expertise, but also on alignment among technology, training, doctrine, and system design.

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