AI RESEARCH
Detecting Distillation Data from Reasoning Models
arXiv CS.AI
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ArXi:2510.04850v3 Announce Type: replace-cross Reasoning distillation has emerged as a prevailing paradigm for transferring reasoning capabilities from large reasoning models to small language models. Yet, reasoning distillation risks data contamination: benchmark data may inadvertently be included in the distillation data, thereby inflating model performance metrics. In this work, we formally define the distillation data detection task, which determines whether a given question is included in the model's distillation data.