AI RESEARCH
Instruction Complexity Induces Positional Collapse in Adversarial LLM Evaluation
arXiv CS.AI
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ArXi:2604.27249v1 Announce Type: cross When instructed to underperform on multiple-choice evaluations, do language models engage with question content or fall back on positional shortcuts? We map the boundary between these regimes using a six-condition adversarial instruction-specificity gradient administered to two instruction-tuned LLMs (Llama-3-8B and Llama-3.1-8B) on 2,000 MMLU-Pro items. Distributional screening (response-position entropy) and an independent content-engagement criterion (difficulty-accuracy correlation) jointly characterise each condition.