LLM Reasoning 相关度: 7/10

Authority-Level Priors: An Under-Specified Constraint in Hierarchical Predictive Processing

Marcela Palejova
arXiv: 2603.18888v1 发布: 2026-03-19 更新: 2026-03-19

AI 摘要

论文提出Authority-Level Priors (ALPs)概念,解决分层预测处理中身份调节机制不足的问题,并提出可验证的预测。

主要贡献

  • 提出Authority-Level Priors (ALPs)的概念
  • 解释了信念更新和自主神经反应不一致的现象
  • 提出了ALPs的神经生物学基础和可验证的预测

方法论

计算建模,形式化ALPs,并通过纵向应激诱导范式评估模型的预测,结合神经生物学解释。

原文摘要

Hierarchical predictive processing explains adaptive behaviour through precision-weighted inference. Explicit belief revision often fails to produce corresponding changes in stress reactivity or autonomic regulation. This asymmetry suggests the framework leaves under-specified a governance-level constraint concerning which identity-level hypotheses regulate autonomic and behavioural control under uncertainty. We introduce Authority-Level Priors (ALPs) as meta-structural constraints defining a regulatory-admissible subset (Hauth, a subset of H) of identity-level hypotheses. ALPs are not additional representational states nor hyperpriors over precision; they constrain which hypotheses are admissible for regulatory control. Precision determines influence conditional on admissibility; ALPs determine admissibility itself. This explains why explicit belief updating modifies representational beliefs while autonomic threat responses remain stable. A computational formalisation restricts policy optimisation to policies generated by authorised hypotheses, yielding testable predictions concerning stress-reactivity dynamics, recovery time constants, compensatory control engagement, and behavioural persistence. Neurobiologically, ALPs manifest through distributed prefrontal arbitration and control networks. The proposal is compatible with variational active inference and introduces no additional inferential operators, instead formalising a boundary condition required for determinate identity-regulation mapping. The model generates falsifiable predictions: governance shifts should produce measurable changes in stress-reactivity curves, recovery dynamics, compensatory cognitive effort, and behavioural change durability. ALPs are advanced as an architectural hypothesis to be evaluated through computational modelling and longitudinal stress-induction paradigms.

标签

Hierarchical Predictive Processing Authority-Level Priors Active Inference Stress-Reactivity

arXiv 分类

cs.LG