Dirac-equation signal processing: Physics boosts topological machine learning.

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2025-05-02 eCollection Date: 2025-05-01 DOI:10.1093/pnasnexus/pgaf139
Runyue Wang, Yu Tian, Pietro Liò, Ginestra Bianconi
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引用次数: 0

Abstract

Topological signals are variables or features associated with both nodes and edges of a network. Recently, in the context of topological machine learning, great attention has been devoted to signal processing of such topological signals. Most of the previous topological signal processing algorithms treat node and edge signals separately and work under the hypothesis that the true signal is smooth and/or well approximated by a harmonic eigenvector of the higher-order Laplacian, which may be violated in practice. Here, we propose Dirac-equation signal processing, a framework for efficiently reconstructing true signals on nodes and edges, also if they are not smooth or harmonic, by processing them jointly. The proposed physics-inspired algorithm is based on the spectral properties of the topological Dirac operator. It leverages the mathematical structure of the topological Dirac equation to boost the performance of the signal processing algorithm. We discuss how the relativistic dispersion relation obeyed by the topological Dirac equation can be used to assess the quality of the signal reconstruction. Finally, we demonstrate the improved performance of the algorithm with respect to previous algorithms. Specifically, we show that Dirac-equation signal processing can also be used efficiently if the true signal is a nontrivial linear combination of more than one eigenstate of the Dirac equation, as it generally occurs for real signals.

狄拉克方程信号处理:物理促进拓扑机器学习。
拓扑信号是与网络的节点和边缘相关的变量或特征。近年来,在拓扑机器学习的背景下,这类拓扑信号的信号处理备受关注。以往的拓扑信号处理算法大多将节点信号和边缘信号分开处理,并假设真实信号是光滑的和/或被高阶拉普拉斯算子的谐波特征向量很好地逼近,这在实践中可能会被违背。在这里,我们提出了狄拉克方程信号处理,这是一个有效地重建节点和边缘上的真信号的框架,如果它们不是光滑的或谐波的,也可以通过联合处理它们。提出的物理启发算法是基于拓扑狄拉克算子的谱特性。它利用拓扑狄拉克方程的数学结构来提高信号处理算法的性能。讨论了如何利用拓扑狄拉克方程所服从的相对论色散关系来评价信号重建的质量。最后,我们证明了该算法相对于先前算法的性能改进。具体来说,我们表明,如果真信号是Dirac方程的多个特征态的非平凡线性组合,也可以有效地使用狄拉克方程信号处理,因为它通常发生在实信号中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.80
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0.00%
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