AI RESEARCH
Many Preferences, Few Policies: Towards Scalable Language Model Personalization
arXiv CS.AI
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ArXi:2604.04144v1 Announce Type: cross The holy grail of LLM personalization is a single LLM for each user, perfectly aligned with that user's preferences. However, maintaining a separate LLM per user is impractical due to constraints on compute, memory, and system complexity. We address this challenge by developing a principled method for selecting a small portfolio of LLMs that captures representative behaviors across heterogeneous users. We model user preferences across multiple traits (e.g., safety, humor, brevity) through a multi-dimensional weight vector.