State explains 74% of variance in user psychological profiles versus 26% for trait, revealing that LLMs are state-blind and reward models respond inconsistently to the same users.
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Beyond Fixed Psychological Personas: State Beats Trait, but Language Models are State-Blind
State explains 74% of variance in user psychological profiles versus 26% for trait, revealing that LLMs are state-blind and reward models respond inconsistently to the same users.