English

Mitigating Preference Leakage via Strict Estimator Separation for Normative Generative Ranking

Information Retrieval 2026-02-26 v2

Abstract

In Generative Information Retrieval (GenIR), the bottleneck has shifted from generation to the selection of candidates, particularly for normative criteria such as cultural relevance. Current LLM-as-a-Judge evaluations often suffer from circularity and preference leakage, where overlapping supervision and evaluation models inflate performance. We address this by formalising cultural relevance as a within-query ranking task and introducing a leakage-free two-judge framework that strictly separates supervision (Judge B) from evaluation (Judge A). On a new benchmark of 33,052 (NGR-33k) culturally grounded stories, we find that while classical baselines yield only modest gains, a dense bi-encoder distilled from a Judge-B-supervised Cross-Encoder is highly effective. Although the Cross-Encoder provides a strong supervision signal for distillation, the distilled BGE-M3 model substantially outperforms it under leakage-free Judge~A evaluation. We validate our framework on the human-curated Moral Stories dataset, showing strong alignment with human norms. Our results demonstrate that rigorous evaluator separation is a prerequisite for credible GenIR evaluation, proving that subtle cultural preferences can be distilled into efficient rankers without leakage.

Keywords

Cite

@article{arxiv.2602.20800,
  title  = {Mitigating Preference Leakage via Strict Estimator Separation for Normative Generative Ranking},
  author = {Dalia Nahhas and Xiaohao Cai and Imran Razzak and Shoaib Jameel},
  journal= {arXiv preprint arXiv:2602.20800},
  year   = {2026}
}
R2 v1 2026-07-01T10:49:45.066Z