AI RESEARCH

Fair Data Pre-Processing with Imperfect Attribute Space

arXiv CS.LG

ArXi:2603.26456v1 Announce Type: cross Fair data pre-processing is a widely used strategy for mitigating bias in machine learning. A promising line of research focuses on calibrating datasets to satisfy a designed fairness policy so that sensitive attributes influence outcomes only through clearly specified legitimate causal pathways. While effective on clean and information-rich data, these methods often break down in real-world scenarios with imperfect attribute spaces, where decision-relevant factors may be deemed unusable or even missing.