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Published:2025/12/23 18:09:51

知性を解き明かす!類似性場理論でAIを激変させる計画💖

超要約:AIの頭の中を覗ける魔法!「類似性」で賢さを定義する新理論🌟

✨ ギャル的キラキラポイント ✨

  • ● AIの「意味」を理解できるように!従来のAIじゃ難しかったことができちゃうかも♪
  • ● AIが「なんでそう考えたか」が分かるように!説明できるAIってすごくない?😎
  • ● AIをもっと使いこなせる!ビジネスにも役立つ可能性大だよ~ん!😉

詳細解説いくよ~💖

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Similarity Field Theory: A Mathematical Framework for Intelligence

Kei-Sing Ng

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 $S: U \times U \to [0,1]$ over a universe of entities $U$, satisfying reflexivity $S(E,E)=1$ and treated as a directed relational field (asymmetry and non-transitivity are allowed); (2) the evolution of a system through a sequence $Z_p=(X_p,S^{(p)})$ indexed by $p=0,1,2,\ldots$; (3) concepts $K$ as entities that induce fibers $F_{\alpha}(K)={E\in U \mid S(E,K)\ge \alpha}$, i.e., superlevel sets of the unary map $S_K(E):=S(E,K)$; and (4) a generative operator $G$ that produces new entities. Within this framework, we formalize a generative definition of intelligence: an operator $G$ is intelligent with respect to a concept $K$ if, given a system containing entities belonging to the fiber of $K$, 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. At a high level, this framework reframes intelligence and interpretability as geometric problems on similarity fields--preserving and composing level-set fibers--rather than purely statistical ones. We prove two theorems: (i) asymmetry blocks mutual inclusion; and (ii) stability implies either an anchor coordinate or asymptotic confinement to the target level (up to arbitrarily small tolerance). Together, these results constrain similarity-field evolution and motivate an interpretive lens that can be applied to large language models.

cs / cs.AI