AI RESEARCH

Efficient Ensemble Selection from Binary and Pairwise Feedback

arXiv CS.AI

ArXi:2605.09588v1 Announce Type: cross Organizations increasingly deploy multiple AI systems across task domains, but selecting a small, high-performing ensemble can require costly model calls, benchmark runs, and human evaluation. We study this selection problem as a distributional variant of multiwinner voting: tasks are drawn from an unknown domain distribution, each task induces feedback over candidate experts, and a committee's value on a task is determined by its best-performing member.