
TL;DR
The paper introduces the Context-Content Uncertainty Principle (CCUP), a theoretical framework explaining how inference minimizes uncertainty by aligning high-entropy contexts with low-entropy content through hierarchical, cycle-consistent mechanisms.
Contribution
It formalizes a layered computational framework based on CCUP, deriving operational principles and demonstrating their efficiency through formal theorems and simulations.
Findings
Formalized inference as directional entropy minimization.
Identified four hierarchical layers of operational principles.
Demonstrated efficiency gains via computational simulations.
Abstract
The Context-Content Uncertainty Principle (CCUP) proposes that inference under uncertainty is governed by an entropy asymmetry between context and content: high-entropy contexts must be interpreted through alignment with low-entropy, structured content. In this paper, we develop a layered computational framework that derives operational principles from this foundational asymmetry. At the base level, CCUP formalizes inference as directional entropy minimization, establishing a variational gradient that favors content-first structuring. Building upon this, we identify four hierarchical layers of operational principles: (\textbf{L1}) \emph{Core Inference Constraints}, including structure-before-specificity, asymmetric inference flow, cycle-consistent bootstrapping, and conditional compression, all shown to be mutually reducible; (\textbf{L2}) \emph{Resource Allocation Principles}, such as…
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Taxonomy
TopicsSemantic Web and Ontologies
MethodsBalanced Selection
