Measuring and Eliminating Refusals in Military Large Language Models
arXiv cs.AI / 3/12/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The article presents a gold benchmark for measuring refusal rates in military LLMs, developed by US Army veterans, claimed to be the first dataset of its kind.
- It reports hard rejection rates as high as 98.2% and soft deflection rates ranging from 0% to 21.3% across 31 public models and 3 military models.
- It analyzes correlations with two additional synthetic datasets and shows their relationship to the gold dataset.
- An ablation using the Heretic library on a military-tuned gpt-oss-20b model yields a 66.5-point absolute increase in answer rate, alongside a 2% average relative decrease on other military tasks, underscoring trade-offs in safety tuning.
- In their concluding remarks, the authors call for deeper specialization, including mid-training and end-to-end post-training, to achieve zero refusals and maximum military task accuracy for closed military models.
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