English

Scaling Multiagent Systems with Process Rewards

Artificial Intelligence 2026-02-05 v2 Computation and Language Emerging Technologies Multiagent Systems

Abstract

While multiagent systems have shown promise for tackling complex tasks via specialization, finetuning multiple agents simultaneously faces two key challenges: (1) credit assignment across agents, and (2) sample efficiency of expensive multiagent rollouts. In this work, we propose finetuning multiagent systems with per-action process rewards from AI feedback (MAPPA) to address both. Through assigning credit to individual agent actions rather than only at task completion, MAPPA enables fine-grained supervision without ground truth labels while extracting maximal training signal from each rollout. We demonstrate our approach on competition math problems and tool-augmented data analysis tasks. On unseen math problems, MAPPA achieves +5.0--17.5pp on AIME and +7.8--17.2pp on AMC. For data analysis tasks, our method improves success rate by +16.7pp while quality metrics improve by up to 47%, validating that per-action supervision can lead to improvements across different multiagent systems on various domains. By addressing these challenges, our work takes a first step toward scaling multiagent systems for complex, long-horizon tasks with minimal human supervision.

Keywords

Cite

@article{arxiv.2601.23228,
  title  = {Scaling Multiagent Systems with Process Rewards},
  author = {Ed Li and Junyu Ren and Cat Yan},
  journal= {arXiv preprint arXiv:2601.23228},
  year   = {2026}
}
R2 v1 2026-07-01T09:28:09.738Z