SPDIS-NNLGSISOC-PHJan 12, 2023

Dirac signal processing of higher-order topological signals

arXiv:2301.10137v241 citationsh-index: 59
Originality Incremental advance
AI Analysis

This addresses a gap in signal processing for higher-order networks, enabling more efficient noise reduction in applications like ocean currents and neural systems, though it appears incremental as it builds on existing topological methods.

The paper tackles the problem of processing noisy higher-order topological signals (on nodes, links, triangles) in a consistent way across dimensions, proposing Dirac signal processing, which outperforms Hodge Laplacian-based methods on synthetic and ocean drifter data.

Higher-order networks can sustain topological signals which are variables associated not only to the nodes, but also to the links, to the triangles and in general to the higher dimensional simplices of simplicial complexes. These topological signals can describe a large variety of real systems including currents in the ocean, synaptic currents between neurons and biological transportation networks. In real scenarios topological signal data might be noisy and an important task is to process these signals by improving their signal to noise ratio. So far topological signals are typically processed independently of each other. For instance, node signals are processed independently of link signals, and algorithms that can enforce a consistent processing of topological signals across different dimensions are largely lacking. Here we propose Dirac signal processing, an adaptive, unsupervised signal processing algorithm that learns to jointly filter topological signals supported on nodes, links and triangles of simplicial complexes in a consistent way. The proposed Dirac signal processing algorithm is formulated in terms of the discrete Dirac operator which can be interpreted as "square root" of a higher-order Hodge Laplacian. We discuss in detail the properties of the Dirac operator including its spectrum and the chirality of its eigenvectors and we adopt this operator to formulate Dirac signal processing that can filter noisy signals defined on nodes, links and triangles of simplicial complexes. We test our algorithms on noisy synthetic data and noisy data of drifters in the ocean and find that the algorithm can learn to efficiently reconstruct the true signals outperforming algorithms based exclusively on the Hodge Laplacian.

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