AI RESEARCH

Pandora's Regret: A Proper Scoring Rule for Evaluating Sequential Search

arXiv CS.LG

ArXi:2605.01936v1 Announce Type: new In sequential search, alternatives are tested until the true class is found. Standard proper scoring rules like log loss are local, ignoring the ranking of competitors and misaligning model evaluation with search utility. We show that sequential search induces a pairwise structure that overcomes this. By analyzing the expected cost of optimal search under varying testing costs, we derive Pandora's Regret: a closed-form, pairwise-additive, and strictly proper scoring rule.