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Similarity Field Theory: A General Mathematical Framework for Intelligence

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Abstract

We posit that persisting and transforming similarity relations form the structural basis of any comprehensible dynamic system. This paper introduces Similarity Field Theory, a mathematical framework that formalizes the principles governing similarity values among entities and their evolution. We define: (1) a similarity field S:U×U[0,1]S: U \times U \to [0,1] over a universe of entities UU, satisfying reflexivity S(E,E)=1S(E,E)=1 and treated as a directed relational field (asymmetry and non-transitivity are allowed); (2) the evolution of a system through a sequence Zp=(Xp,S(p))Z_p = (X_p, S^{(p)}) indexed by p=0,1,2,p=0,1,2,\ldots; (3) concepts KK as entities that induce fibers Fα(K)=EUS(E,K)αF_{\alpha}(K) = { E \in U \mid S(E,K) \ge \alpha }, i.e., superlevel sets of the unary map SK(E):=S(E,K)S_K(E) := S(E,K); and (4) a generative operator GG that produces new entities. Within this framework, we formalize a generative definition of intelligence: an operator GG is intelligent with respect to a concept KK if, given a system containing entities belonging to the fiber of KK, it generates new entities that also belong to that fiber. Similarity Field Theory thus offers a foundational language for characterizing, comparing, and constructing intelligent systems. We prove two theorems: (i) asymmetry blocks mutual inclusion; and (ii) stability requires either an anchor coordinate or eventual confinement within a level set. These results ensure that the evolution of similarity fields is both constrained and interpretable, culminating in an exploration of how the framework allows us to interpret large language models and present empirical results using large language models as experimental probes of societal cognition.

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