AILGFeb 20, 2025

A novel approach to the relationships between data features -- based on comprehensive examination of mathematical, technological, and causal methodology

arXiv:2502.15838v1h-index: 25
Originality Highly original
AI Analysis

This foundational work aims to improve AI governance and transparency for researchers and practitioners by offering a new paradigm for analyzing feature relationships.

The study tackles the problem of distorted feature relationships in AI transparency and counterfactual reasoning by proposing the Convergent Fusion Paradigm (CFP) theory, which integrates Hilbert space, backward causation, and Riemannian geometry to reinterpret feature relationships as emergent structures and address the common cause problem in causal modeling.

The expansion of artificial intelligence (AI) has raised concerns about transparency, accountability, and interpretability, with counterfactual reasoning emerging as a key approach to addressing these issues. However, current mathematical, technological, and causal methodologies rely on externalization techniques that normalize feature relationships within a single coordinate space, often distorting intrinsic interactions. This study proposes the Convergent Fusion Paradigm (CFP) theory, a framework integrating mathematical, technological, and causal perspectives to provide a more precise and comprehensive analysis of feature relationships. CFP theory introduces Hilbert space and backward causation to reinterpret the feature relationships as emergent structures, offering a potential solution to the common cause problem -- a fundamental challenge in causal modeling. From a mathematical -- technical perspective, it utilizes a Riemannian manifold-based framework, thereby improving the structural representation of high- and low-dimensional data interactions. From a causal inference perspective, CFP theory adopts abduction as a methodological foundation, employing Hilbert space for a dynamic causal reasoning approach, where causal relationships are inferred abductively, and feature relationships evolve as emergent properties. Ultimately, CFP theory introduces a novel AI modeling methodology that integrates Hilbert space, backward causation, and Riemannian geometry, strengthening AI governance and transparency in counterfactual reasoning.

Foundations

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