AI RESEARCH

What Does Preference Learning Recover from Pairwise Comparison Data?

arXiv CS.LG

ArXi:2602.10286v2 Announce Type: replace Pairwise preference learning is central to machine learning, with recent applications in aligning language models with human preferences. A typical dataset consists of triplets $(x, y^+, y^-)$, where response $y^+$ is preferred over response $y^-$ for context $x$. The Bradley--Terry (BT) model is the predominant approach, modeling preference probabilities as a function of latent score differences. Standard practice assumes data follows this model and learns the latent scores accordingly.