Quark Medical Alignment: A Holistic Multi-Dimensional Alignment and Collaborative Optimization Paradigm
Tianxiang Xu, Jiayi Liu, Yixuan Tong, Jialu Xu, Yunqing Wei, Kaiwen Feng, PanPan Hou, Kangping Yin, Jiyuan Hu, Hao Zhou, Zhenxin Ma, Jian Xu, Guanjun Jiang

TL;DR
This paper introduces a comprehensive multi-dimensional alignment framework for medical language models, addressing the limitations of existing reinforcement learning approaches in high-stakes medical question answering.
Contribution
It proposes a holistic alignment matrix, a closed-loop supervision system, and a unified optimization mechanism to improve medical model alignment across multiple objectives.
Findings
Effective in real-world medical evaluations
Improves alignment of correctness, safety, and compliance
Reduces optimization conflicts and scale mismatches
Abstract
While reinforcement learning for large language model alignment has progressed rapidly in recent years, transferring these paradigms to high-stakes medical question answering reveals a fundamental paradigm mismatch. Reinforcement Learning from Human Feedback relies on preference annotations that are prohibitively expensive and often fail to reflect the absolute correctness of medical facts. Reinforcement Learning from Verifiable Rewards lacks effective automatic verifiers and struggles to handle complex clinical contexts. Meanwhile, medical alignment requires the simultaneous optimization of correctness, safety, and compliance, yet multi-objective heterogeneous reward signals are prone to scale mismatch and optimization conflicts. To address these challenges, we propose a robust medical alignment paradigm. We first construct a holistic multi-dimensional medical alignment matrix that…
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Taxonomy
TopicsMachine Learning in Healthcare · Topic Modeling · Multimodal Machine Learning Applications
