数据融合中的拓扑张量特征值定理

Ronald Katende
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引用次数: 0

摘要

本文介绍了在多模态数据融合背景下利用贝蒂数等拓扑不变式进行张量特征值分析的新框架。传统的张量特征值分析方法依赖于矩阵理论的代数扩展,而本文则提供了拓扑视角,丰富了对张量结构的理解。通过建立将特征值与拓扑特征联系起来的新定理,所提出的框架为数据的潜在结构提供了更深入的见解,增强了可解释性和鲁棒性。数据融合的应用证明了这种方法的理论和实践意义,展示了它在机器学习和数据科学领域产生广泛影响的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topological Tensor Eigenvalue Theorems in Data Fusion
This paper introduces a novel framework for tensor eigenvalue analysis in the context of multi-modal data fusion, leveraging topological invariants such as Betti numbers. While traditional approaches to tensor eigenvalues rely on algebraic extensions of matrix theory, this work provides a topological perspective that enriches the understanding of tensor structures. By establishing new theorems linking eigenvalues to topological features, the proposed framework offers deeper insights into the latent structure of data, enhancing both interpretability and robustness. Applications to data fusion illustrate the theoretical and practical significance of the approach, demonstrating its potential for broad impact across machine learning and data science domains.
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