English

A Rubric-Supervised Critic from Sparse Real-World Outcomes

Artificial Intelligence 2026-03-05 v1 Machine Learning

Abstract

Academic benchmarks for coding agents tend to reward autonomous task completion, measured by verifiable rewards such as unit-test success. In contrast, real-world coding agents operate with humans in the loop, where success signals are typically noisy, delayed, and sparse. How can we bridge this gap? In this paper, we propose a process to learn a "critic" model from sparse and noisy interaction data, which can then be used both as a reward model for either RL-based training or inference-time scaling. Specifically, we introduce Critic Rubrics, a rubric-based supervision framework with 24 behavioral features that can be derived from human-agent interaction traces alone. Using a semi-supervised objective, we can then jointly predict these rubrics and sparse human feedback (when present). In experiments, we demonstrate that, despite being trained primarily from trace-observable rubrics and sparse real-world outcome proxies, these critics improve best-of-N reranking on SWE-bench (Best@8 +15.9 over Random@8 over the rerankable subset of trajectories), enable early stopping (+17.7 with 83% fewer attempts), and support training-time data curation via critic-selected trajectories.

Keywords

Cite

@article{arxiv.2603.03800,
  title  = {A Rubric-Supervised Critic from Sparse Real-World Outcomes},
  author = {Xingyao Wang and Valerie Chen and Heng Ji and Graham Neubig},
  journal= {arXiv preprint arXiv:2603.03800},
  year   = {2026}
}
R2 v1 2026-07-01T11:02:35.204Z