AI RESEARCH
On the Sensitivity of Instruction-tuned LLMs to Harmful Sentences in Long Inputs
arXiv CS.CL
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ArXi:2510.05864v2 Announce Type: replace Large language models (LLMs) increasingly operate on long inputs, yet their behavior when harmful sentences are sparsely embedded within such inputs remains poorly understood. We present a sensitivity analysis that probes how LLMs extract harmful sentences embedded in long inputs. We construct long inputs by combining neutral and harmful sentences, and systematically vary four factors: input length (600--30,000 tokens), the proportion of harmful sentences (0.01--0.50), harm realization (explicit vs.