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The Axiom-Based Atlas: A Structural Mapping of Theorems via Foundational Proof Vectors (2504.00063v1)

Published 31 Mar 2025 in cs.AI and math.LO

Abstract: The Axiom-Based Atlas is a novel framework that structurally represents mathematical theorems as proof vectors over foundational axiom systems. By mapping the logical dependencies of theorems onto vectors indexed by axioms - such as those from Hilbert geometry, Peano arithmetic, or ZFC - we offer a new way to visualize, compare, and analyze mathematical knowledge. This vector-based formalism not only captures the logical foundation of theorems but also enables quantitative similarity metrics - such as cosine distance - between mathematical results, offering a new analytic layer for structural comparison. Using heatmaps, vector clustering, and AI-assisted modeling, this atlas enables the grouping of theorems by logical structure, not just by mathematical domain. We also introduce a prototype assistant (Atlas-GPT) that interprets natural language theorems and suggests likely proof vectors, supporting future applications in automated reasoning, mathematical education, and formal verification. This direction is partially inspired by Terence Tao's recent reflections on the convergence of symbolic and structural mathematics. The Axiom-Based Atlas aims to provide a scalable, interpretable model of mathematical reasoning that is both human-readable and AI-compatible, contributing to the future landscape of formal mathematical systems.

Summary

The Axiom-Based Atlas: A Framework for Theorem Structural Mapping

The paper presents a novel framework termed the "Axiom-Based Atlas," which structurally represents mathematical theorems using proof vectors based on foundational axiom systems. This approach seeks to shift the categorization of theorems from traditional domain-based classification to one based on logical dependencies, allowing for quantitative comparison of mathematical logic via similarity metrics such as cosine distance. The conceptual foundation rests on capturing the logical underpinnings of theorems through a fixed axiom basis, which provides an analytic layer for structural comparison.

Core Methodology

The methodology involves representing each mathematical theorem as a proof vector, with components corresponding to axioms used in its proof. Formal axiom systems such as Hilbert's Geometry, Peano Arithmetic, and ZFC serve as the coordinate bases. Proof vectors use binary or weighted values to indicate the presence or relevance of each axiom. This structure allows for the application of various analytic techniques, including heatmaps, vector clustering, cosine similarity metrics, and cross-domain theorem comparison.

Numerical Findings

The paper demonstrates the framework using representative theorems across different axiom systems, exhibiting how each theorem's proof vector can reveal logical commonalities and differences quantitatively. Dimension-specific proof vectors provide insights into shared logical foundations across theorems, transcending their individual mathematical domains.

Practical and Theoretical Implications

The implications of this research are manifold. The Axiom-Based Atlas holds potential for enhancing educational approaches by providing a structured understanding of axiomatic dependencies. In logic, it offers tools for recognizing complex proof hierarchies or detecting minimal axiom sets necessary for proving specific results. Moreover, it aligns with the digitization of mathematical knowledge, serving as an intermediary structure between formal databases and informal language learning.

Integration with existing proof assistants could facilitate automated verification procedures, enriching AI models' capabilities in reasoning about logical structures. The framework could be pivotal for AI-augmented conjecture generation by identifying gaps or outliers within logical vector spaces.

Future Developments

The paper suggests expanding the dataset, integrating additional axiom systems, and improving the accuracy of the Atlas-GPT prototype. This assistant leverages AI for parsing natural language descriptions and predicting proof vectors, demonstrating the potential synergy between human and machine interaction in structural verification.

The development of more sophisticated tools for theorem interaction and editing, coupled with AI integration, portends a future where mathematical exploration is intertwined with automated reasoning systems. The paradigms proposed in this paper lay the groundwork for evolving research in structural mathematics and computational logic.

By reframing mathematical theorems within a vector space of foundational axioms, the Axiom-Based Atlas opens new avenues for exploring, organizing, and engaging with the complex landscape of mathematical reasonings, promising advancements in both theoretical frameworks and practical applications.

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