Uncertainty-Aware Variational Reward Factorization via Probabilistic Preference Bases for LLM Personalization explores An uncertainty-aware framework personalizes LLMs by modeling user preferences as distributions, improving accuracy and reliability over existing methods.. Commercial viability score: 7/10 in LLM Personalization.
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