Yang Liu

Other people with similar names: Yang Janet Liu (Georgetown University; 刘洋), Yang Liu (Tsinghua), Yang Liu (Fudan), Yang Liu (BIGAI), Yang Liu, Yang Liu (Hunan), Yang Liu (3M Health Information Systems), Yang Liu, Yang Liu (UC Santa Cruz), Yang Liu (South China University of Technology), Yang Liu, Yang Liu (NTU), Yang Liu (Sun Yat-sen University), Yang Liu (North Carolina Central University), Yang Liu (Beijing Language and Culture University), Yang Liu (National University of Defense Technology), Yang Liu (Edinburgh Ph.D., Microsoft), Yang Liu (University of Helsinki), Yang Liu (The Chinese University of Hong Kong (Shenzhen)), Yang Liu (刘扬) (刘扬; Ph.D Purdue; ICSI, Dallas, Facebook, Liulishuo, Amazon), Yang Liu (刘洋) (刘洋; ICT, Tsinghua, Beijing Academy of Artificial Intelligence), Yang Liu (Microsoft Cognitive Services Research), Yang Liu (刘扬) (Peking University), Yang Liu (Samsung Research Center Beijing), Yang Liu (Tianjin University, China), Yang Liu (Univ. of Michigan, UC Santa Cruz), Yang Liu (Wilfrid Laurier University)

Unverified author pages with similar names: Yang Liu


2026

Credit risk models suffer from rapid performance decay due to distribution shifts, requiring frequent updates to meet strict operational guardrails. However, manual refreshing takes weeks of trial-and-error across upstream data engineering and downstream training. We present ACRM, a deployed multi-agent framework that automates the end-to-end credit modeling workflow by treating it as a learnable trajectory of agent interactions. Unlike AutoML, which optimizes hyperparameters on fixed datasets, ACRM’s action space extends to upstream data semantics—cohort selection, observation windowing, feature screening—where the majority of performance recovery occurs. A central Orchestrator coordinates specialist agents through a three-stream decision stack: rule-based safety guardrails, retrieval-augmented grounding from historical workflows, and preference alignment via DPO on expert-labeled trajectories. Deployed at a major fintech institution for three months across six business scenarios, ACRM reduced the average model refresh cycle from weeks to 1.1 days and iteration rounds by 65%, while maintaining superior stability metrics.