Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Multi-Objective and Mixed-Reward Reinforcement Learning via Reward-Decorrelated Policy Optimization

About

Complex reinforcement learning environments frequently employ multi-task and mixed-reward formulations. In these settings, heterogeneous reward distributions and correlated reward dimensions often destabilize the construction of scalar advantages. To address these challenges, we propose Reward-Decorrelated Policy Optimization (RDPO), a reward-processing method designed to explicitly target both failure modes. RDPO first utilizes Magnitude-Aware Quantile normalization to stabilize prompt-level advantage allocation across binary, fractional, and continuous rewards. It then applies Mahalanobis whitening within each active reward subspace to mitigate correlation redundancy prior to aggregation. When applied during the post-training of LongCat-Flash, RDPO enhances instruction following, writing quality, and robustness to hard prompts while remaining broadly competitive on reasoning and coding evaluations.

Yang Bai, Kaiyuan Liu, Ziyuan Zhuang, Jiahong Zhou, Rongxiang Weng, Xin Chen, Jingang Wang, Xunliang Cai• 2026

Related benchmarks

TaskDatasetResultRank
Instruction FollowingIFEval
IFEval Accuracy90.39
836
CodingHumanEval+
Pass@191.46
164
CodingMBPP+
Pass@179.63
117
Mathematical & Scientific ReasoningGPQA
Accuracy67.79
22
Instruction FollowingGuideBench
Accuracy87.04
7
CodingLiveCodeBench 24.08-25.01
Pass Rate63.8
3
Instruction FollowingSOP-Maze
Accuracy38.17
3
Math and Knowledge ReasoningAIME 2025
Average Score78.85
3
Writing and Arena EvaluationWritingBench
Accuracy87.63
3
Writing and Arena EvaluationArenaHard V2
ArenaHard-v2 Creative Accuracy89
3
Showing 10 of 13 rows

Other info

Follow for update