Soul Computing is introduced as a framework distinguishing narrow and broad forms for constructing intelligent agents with self-identity via intensional cores, separate from affective computing or virtual humans.
POPI: Personalizing LLMs via Optimized Natural Language Preference Inference
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abstract
Large language models (LLMs) are typically aligned with population-level preferences, despite substantial variation across individual users. We introduce POPI, a user-level personalization framework that separates the problem into two components connected by a natural-language interface: a shared inference model that distills heterogeneous user signals into a concise preference summary, and a shared generator that conditions on this summary to produce personalized responses. Both components are trained under a unified preference-optimization objective, with reinforcement learning handling the non-differentiable inference step. This objective decomposes into generator approximation error and summary informativeness, revealing how a single loss simultaneously drives accurate generation and informative summarization. Because the interface is natural language, learned summaries can be inferred once per user and reused across different generators -- including frozen, black-box commercial APIs. Across four personalization benchmarks, POPI generally improves personalization quality while reducing context overhead by up to an order of magnitude.
fields
cs.AI 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Soul Computing: A Theoretical Framework and Technical Architecture for Intelligent Agents with Independent Consciousness
Soul Computing is introduced as a framework distinguishing narrow and broad forms for constructing intelligent agents with self-identity via intensional cores, separate from affective computing or virtual humans.