评分 6.4 · 来源:cs.CL updates on arXiv.org · 发布于 2026-04-08
评分依据:有一定参考价值的AI研究论文
arXiv:2601.05930v2 Announce Type: replace Abstract: Autonomous machine learning agents have revolutionized scientific discovery, yet they remain constrained by a Generate-Execute-Feedback paradigm. Previous approaches suffer from a severe Execution Bottleneck, as hypothesis evaluation relies strictly on expensive physical execution. To bypass these physical constraints, we internalize execution priors to substitute costly runtime checks with instantaneous predictive reasoning, drawing inspiration from World Models. In this work, we formalize the task of Data-centric Solution Preference and con