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Papers/Personalizing LLMs with Binary Feedback: A Preference-Corrected Optimization Framework
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Personalizing LLMs with Binary Feedback: A Preference-Corrected Optimization Framework

May 11, 2026

arXiv
Abstract

Large Language Model (LLM) personalization aims to align model behaviors with individual user preferences. Existing methods often focus on isolated user histories, neglecting the essential role of inter-user differences. We propose C-BPO, a framework that personalizes LLMs via preference-calibrated binary signals. By treating target user data as positive feedback and other users' data as an auxiliary set of implicit negative signals, C-BPO captures distinct inter-user differences. To mitigate the preference overlap issue, where shared task knowledge is erroneously penalized, we derive an objective grounded in Positive-Unlabeled (PU) learning theory. This approach purifies negative signals by subtracting ``positive bias'', ensuring alignment with unique idiosyncrasies without compromising general helpfulness. Empirical experiments across various personalization tasks and backbone LLMs show C-BPO consistently outperforms baselines, demonstrating the efficacy of preference-calibrated binary signals in modeling inter-user differences.

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Authors
Xilai Ma, Liye Zhao, Weijun Yao, Haibing Di, Wenya Wang, Jing Li
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arXiv:2605.10043