AI RESEARCH
Automatically Finding and Validating Unexpected Side-Effects of Interventions on Language Models
arXiv CS.AI
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ArXi:2605.05090v1 Announce Type: cross We present an automated, contrastive evaluation pipeline for auditing the behavioral impact of interventions on large language models. Given a base model $M_1$ and an intervention model $M_2$, our method compares their free-form, multi-token generations across aligned prompt contexts and produces human-readable, statistically validated natural-language hypotheses describing how the models differ, along with recurring themes that summarize patterns across validated hypotheses.