Topological Signal Processing: An Application-Oriented Tutorial
Pith reviewed 2026-05-25 00:11 UTC · model grok-4.3
The pith
Topological Signal Processing generalizes graph signal processing to signals on edges and higher simplices via the combinatorial Hodge Laplacian.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
TSP generalizes GSP by representing data as simplicial complexes and applying the combinatorial Hodge Laplacian to extend filtering, Fourier transforms, and related operations to the topological level, which enables the study of higher-order interactions; this is illustrated by constructing an edge signal from lagged nodal interactions and applying it to brain imaging data to reveal nontrivial interactions between sets of regions.
What carries the argument
The combinatorial Hodge Laplacian, which extends the graph Laplacian from nodes to signals on edges and higher-dimensional simplices.
Load-bearing premise
The combinatorial Hodge Laplacian supplies the right generalization of the graph Laplacian for signals on higher-order simplices in actual datasets.
What would settle it
Applying the TSP pipeline to the brain imaging dataset yields no additional interactions beyond those already visible from standard node-signal analysis.
Figures
read the original abstract
Many modern datasets are large and carry complex structural relationships. Graph-based methods have traditionally been used to represent networked data, modeling individual elements as nodes and pairwise interactions as edges. Furthermore, Graph Signal Processing (GSP) has been developed to analyze signals on graph nodes, such as temperature measurements (node signals) across different regions of a country represented as a graph. Topological Signal Processing (TSP) is an emerging field that generalizes GSP, enabling the analysis of signals defined not only on nodes but also on edges, triangles, and higher-dimensional network elements, modeled as simplicial complexes and related topological structures. This makes TSP naturally well-suited for studying higher-order interactions in complex systems by extending classical signal processing concepts, such as filtering and Fourier transforms, to the topological level. Despite its versatility, TSP remains challenging for many practitioners. Therefore, we present an accessible overview of TSP foundations while drawing connections with application-oriented settings. We focus on processing techniques based on the combinatorial Hodge Laplacian, which generalizes the graph Laplacian to simplicial complexes. In particular, we review key TSP concepts, relate them to real-world examples, and discuss how higher-order structures and signals can be derived from datasets. For instance, we introduce an edge-level signal capturing lagged interactions between nodal signals, and demonstrate its use in a case study on TSP-based analysis of brain imaging data, revealing nontrivial interactions between sets of brain regions. Overall, we aim to promote a broader adoption of TSP by bridging methodological developments with applications, fostering its use among a wide community of theoretical and applied researchers.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript is an application-oriented tutorial on Topological Signal Processing (TSP). It presents TSP as a generalization of Graph Signal Processing (GSP) that extends signal analysis from nodes to edges, triangles, and higher simplices via the combinatorial Hodge Laplacian. The paper reviews core TSP concepts (Hodge decomposition, topological Fourier transforms, filtering), connects them to datasets, shows how to construct higher-order signals (including an edge-level lagged interaction signal derived from nodal data), and illustrates the framework with a brain-imaging case study that claims to reveal nontrivial higher-order interactions among brain regions.
Significance. If the tutorial content is accurate and the case study convincingly isolates higher-order effects, the work could lower the barrier for practitioners in neuroscience and other complex-systems fields to adopt TSP. The explicit construction of an edge signal from nodal time series and the use of the Hodge Laplacian are concrete bridges between theory and data; however, the significance hinges on whether the brain-imaging demonstration adds information beyond standard node-level GSP.
major comments (2)
- [brain-imaging case study] Case-study section (brain-imaging demonstration): the claim that the edge-level lagged signal and Hodge decomposition reveal 'nontrivial interactions between sets of brain regions' is not supported by any reported baseline comparison against node-level GSP on the same data. No quantitative metric (unique variance explained by the curl/harmonic components, ablation of the 2-simplex terms, or statistical test against a graph-Laplacian null model) is provided, leaving open the possibility that the observed effects are recoverable from the underlying graph Laplacian alone.
- [edge-level signal construction] Section on construction of the edge-level signal: the lagged-interaction edge signal is introduced as a motivating example, yet the manuscript does not specify the precise lag-selection procedure, the normalization used to obtain a well-defined edge flow, or any sensitivity analysis showing that the subsequent Hodge decomposition is robust to these choices. This detail is load-bearing for reproducibility of the claimed higher-order findings.
minor comments (2)
- [foundations] Notation for the combinatorial Hodge Laplacian is introduced without an explicit comparison table to the graph Laplacian; adding such a side-by-side definition would improve accessibility for GSP readers.
- [application examples] Several real-world examples are mentioned in passing (temperature, brain imaging) but lack pointers to the exact public datasets or preprocessing pipelines used; supplying these references would aid readers who wish to replicate the constructions.
Simulated Author's Rebuttal
We thank the referee for the constructive comments on our tutorial manuscript. We agree that the two major points identify areas where additional clarity and supporting analysis would strengthen the presentation, particularly for reproducibility and for substantiating the illustrative claims in the case study. We outline our responses and planned revisions below.
read point-by-point responses
-
Referee: [brain-imaging case study] Case-study section (brain-imaging demonstration): the claim that the edge-level lagged signal and Hodge decomposition reveal 'nontrivial interactions between sets of brain regions' is not supported by any reported baseline comparison against node-level GSP on the same data. No quantitative metric (unique variance explained by the curl/harmonic components, ablation of the 2-simplex terms, or statistical test against a graph-Laplacian null model) is provided, leaving open the possibility that the observed effects are recoverable from the underlying graph Laplacian alone.
Authors: We acknowledge that the brain-imaging demonstration is primarily illustrative and that the current text does not include a quantitative baseline comparison against node-level GSP. To address this, the revised manuscript will add a dedicated subsection that reports (i) the fraction of variance in the edge signal uniquely captured by the curl and harmonic components after regressing out the gradient component, (ii) an ablation removing contributions from 2-simplices, and (iii) a direct comparison of reconstruction error or prediction performance against a standard graph-Laplacian model on the same nodal time series. These additions will clarify whether the higher-order effects provide information beyond what is recoverable from the underlying graph structure. revision: yes
-
Referee: [edge-level signal construction] Section on construction of the edge-level signal: the lagged-interaction edge signal is introduced as a motivating example, yet the manuscript does not specify the precise lag-selection procedure, the normalization used to obtain a well-defined edge flow, or any sensitivity analysis showing that the subsequent Hodge decomposition is robust to these choices. This detail is load-bearing for reproducibility of the claimed higher-order findings.
Authors: We agree that the construction details are essential for reproducibility. In the revised manuscript we will expand the relevant section to state: (a) the lag-selection rule (maximum lagged cross-correlation within a physiologically plausible window), (b) the normalization step that converts pairwise lagged products into an antisymmetric edge flow consistent with the oriented incidence matrix, and (c) a sensitivity analysis that recomputes the Hodge decomposition for a range of lags and reports stability of the resulting curl/harmonic energy ratios. These additions will be placed immediately before the brain-imaging case study. revision: yes
Circularity Check
Expository tutorial presents no derivations or predictions.
full rationale
The paper is an application-oriented tutorial reviewing TSP foundations via the combinatorial Hodge Laplacian, relating concepts to examples, and illustrating an edge-level lagged signal in a brain imaging case study. No equations, first-principles derivations, parameter fits, or predictions are claimed that could reduce to inputs by construction. All content is expository and self-contained against external literature; no self-citation chains or ansatzes are load-bearing for any result.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption The combinatorial Hodge Laplacian is the natural operator for extending signal processing concepts to simplicial complexes.
Lean theorems connected to this paper
-
IndisputableMonolith/Foundation/AlexanderDuality.leanalexander_duality_circle_linking unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
We focus on processing techniques based on the combinatorial Hodge Laplacian, which generalizes the graph Laplacian to simplicial complexes... Hodge decomposition... irrotational, rotational, and harmonic components
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
Reference graph
Works this paper leans on
-
[1]
A.-L. Barab ´asi, “Network science,”Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol. 371, no. 1987, p. 20120375, 2013
work page 1987
-
[2]
Graph theory and complex networks,
M. Van Steen, “Graph theory and complex networks,”An introduction, vol. 144, no. 1, p. 7, 2010
work page 2010
-
[3]
T. G. Lewis,Network science: Theory and applications. John Wiley & Sons, 2011
work page 2011
-
[4]
Communities, modules and large-scale structure in networks,
M. E. Newman, “Communities, modules and large-scale structure in networks,”Nature physics, vol. 8, no. 1, pp. 25–31, 2012
work page 2012
-
[5]
Social network analysis: A survey on process, tools, and application,
S. S. Singh, S. Muhuri, S. Mishra, D. Srivastava, H. K. Shakya, and N. Kumar, “Social network analysis: A survey on process, tools, and application,”ACM computing surveys, vol. 56, no. 8, pp. 1–39, 2024
work page 2024
-
[6]
A graph signal processing perspective on functional brain imaging,
W. Huang, T. A. Bolton, J. D. Medaglia, D. S. Bassett, A. Ribeiro, and D. Van De Ville, “A graph signal processing perspective on functional brain imaging,”Proceedings of the IEEE, vol. 106, no. 5, pp. 868–885, 2018
work page 2018
-
[7]
Graph signal processing: Overview, challenges, and ap- plications,
A. Ortega, P. Frossard, J. Kova ˇcevi´c, J. M. Moura, and P. Van- dergheynst, “Graph signal processing: Overview, challenges, and ap- plications,”Proceedings of the IEEE, vol. 106, no. 5, pp. 808–828, 2018
work page 2018
-
[8]
Graph signal processing: History, development, impact, and outlook,
G. Leus, A. G. Marques, J. M. Moura, A. Ortega, and D. I. Shuman, “Graph signal processing: History, development, impact, and outlook,” IEEE Signal Processing Magazine, vol. 40, no. 4, pp. 49–60, 2023
work page 2023
-
[9]
Graphs are maximally expressive for higher-order interactions,
T. P. Peixoto, L. Peel, T. Gross, and M. De Domenico, “Graphs are maximally expressive for higher-order interactions,”arXiv preprint arXiv:2602.16937, 2026
-
[10]
Topological signal processing and learning: Recent advances and future challenges,
E. Isufi, G. Leus, B. Beferull-Lozano, S. Barbarossa, and P. Di Lorenzo, “Topological signal processing and learning: Recent advances and future challenges,”Signal Processing, p. 109930, 2025
work page 2025
-
[11]
What are higher-order networks?
C. Bick, E. Gross, H. A. Harrington, and M. T. Schaub, “What are higher-order networks?”SIAM review, vol. 65, no. 3, pp. 686–731, 2023
work page 2023
-
[12]
Networks beyond pairwise interactions: Structure and dynamics,
F. Battiston, G. Cencetti, I. Iacopini, V . Latora, M. Lucas, A. Patania, J.-G. Young, and G. Petri, “Networks beyond pairwise interactions: Structure and dynamics,”Physics reports, vol. 874, pp. 1–92, 2020
work page 2020
-
[13]
Robinson,Topological signal processing
M. Robinson,Topological signal processing. Springer, 2014, vol. 81
work page 2014
-
[14]
Topological signal processing over simplicial complexes,
S. Barbarossa and S. Sardellitti, “Topological signal processing over simplicial complexes,”IEEE Transactions on Signal Processing, vol. 68, pp. 2992–3007, 2020
work page 2020
-
[15]
Topological signal processing: Making sense of data building on multiway relations,
——, “Topological signal processing: Making sense of data building on multiway relations,”IEEE Signal Processing Magazine, vol. 37, no. 6, pp. 174–183, 2020
work page 2020
-
[16]
The topological dirac equation of networks and sim- plicial complexes,
G. Bianconi, “The topological dirac equation of networks and sim- plicial complexes,”Journal of Physics: Complexity, vol. 2, no. 3, p. 035022, 2021
work page 2021
-
[17]
Dirac signal processing of higher-order topological signals,
L. Calmon, M. T. Schaub, and G. Bianconi, “Dirac signal processing of higher-order topological signals,”New Journal of Physics, vol. 25, no. 9, p. 093013, 2023
work page 2023
-
[18]
Topological signal pro- cessing over cell complexes,
S. Sardellitti, S. Barbarossa, and L. Testa, “Topological signal pro- cessing over cell complexes,” in2021 55th Asilomar Conference on Signals, Systems, and Computers. IEEE, 2021, pp. 1558–1562
work page 2021
-
[19]
Topological signal processing over cell multicomplexes via cross-laplacian opera- tors,
S. Sardellitti, B. C. Bispo, F. A. Santos, and J. B. Lima, “Topological signal processing over cell multicomplexes via cross-laplacian opera- tors,”arXiv preprint arXiv:2510.09139, 2025
-
[20]
Tangent bundle convolutional learning: from manifolds to cellular sheaves and back,
C. Battiloro, Z. Wang, H. Riess, P. Di Lorenzo, and A. Ribeiro, “Tangent bundle convolutional learning: from manifolds to cellular sheaves and back,”IEEE Transactions on Signal Processing, vol. 72, pp. 1892–1909, 2024
work page 1909
-
[21]
Random walks on simplicial complexes and the normalized hodge 1-laplacian,
M. T. Schaub, A. R. Benson, P. Horn, G. Lippner, and A. Jadbabaie, “Random walks on simplicial complexes and the normalized hodge 1-laplacian,”SIAM Review, vol. 62, no. 2, pp. 353–391, 2020
work page 2020
-
[22]
Simplicial convolutional filters,
M. Yang, E. Isufi, M. T. Schaub, and G. Leus, “Simplicial convolutional filters,”IEEE Transactions on Signal Processing, vol. 70, pp. 4633– 4648, 2022
work page 2022
-
[23]
Probabilistic topological models over simplicial complexes,
S. Sardellitti and S. Barbarossa, “Probabilistic topological models over simplicial complexes,” in2023 57th Asilomar Conference on Signals, Systems, and Computers. IEEE, 2023, pp. 822–826
work page 2023
-
[24]
Hodge-compositional edge gaussian processes,
M. Yang, V . Borovitskiy, and E. Isufi, “Hodge-compositional edge gaussian processes,”arXiv preprint arXiv:2310.19450, 2023
-
[25]
Stationarity and spectral characterization of random signals on simplicial complexes,
M. Navarro, A. Buciulea, S. Segarra, and A. Marques, “Stationarity and spectral characterization of random signals on simplicial complexes,” arXiv preprint arXiv:2602.03055, 2026
-
[26]
S. Ebli, M. Defferrard, and G. Spreemann, “Simplicial neural net- works,”arXiv preprint arXiv:2010.03633, 2020
-
[27]
Convolutional learning on simplicial com- plexes,
M. Yang and E. Isufi, “Convolutional learning on simplicial com- plexes,”arXiv preprint arXiv:2301.11163, 2023
-
[28]
Generalized simplicial attention neural networks,
C. Battiloro, L. Testa, L. Giusti, S. Sardellitti, P. Di Lorenzo, and S. Barbarossa, “Generalized simplicial attention neural networks,” IEEE Transactions on Signal and Information Processing over Net- works, 2024
work page 2024
-
[29]
Simplicial representation learning with neuralk-forms,
K. Maggs, C. Hacker, and B. Rieck, “Simplicial representation learning with neuralk-forms,”arXiv preprint arXiv:2312.08515, 2023
-
[30]
Position: Topological deep learning is the new frontier for relational learning,
T. Papamarkou, T. Birdal, M. Bronstein, G. Carlsson, J. Curry, Y . Gao, M. Hajij, R. Kwitt, P. Lio, P. Di Lorenzoet al., “Position: Topological deep learning is the new frontier for relational learning,”Proceedings of machine learning research, vol. 235, p. 39529, 2024
work page 2024
-
[31]
Physics-informed topological signal processing for water distribution network monitoring,
T. Cattai, S. Sardellitti, S. Colonnese, F. Cuomo, and S. Barbarossa, “Physics-informed topological signal processing for water distribution network monitoring,”arXiv preprint arXiv:2505.07560, 2025
-
[32]
Leak detection in water distribution networks using topological signal processing,
T. Cattai, S. Sardellitti, S. Colonnese, F. Cuomo, S. Barbarossaet al., “Leak detection in water distribution networks using topological signal processing,” inProceedings of the 33rd European Signal Processing Conference (EUSIPCO), 2025
work page 2025
-
[33]
Learning higher-order interactions in brain networks via topological signal processing,
B. C. Bispo, S. Sardellitti, F. A. Santos, and J. B. Lima, “Learning higher-order interactions in brain networks via topological signal processing,”arXiv preprint arXiv:2504.07695, 2025
-
[34]
From nodes to edges: Edge- based laplacians for brain signal processing,
A. Santoro, M. Nurisso, and G. Petri, “From nodes to edges: Edge- based laplacians for brain signal processing,” inProceedings of the 33rd European Signal Processing Conference (EUSIPCO 2025), Isola delle Femmine, Palermo, Italy, 2025
work page 2025
-
[35]
Multimodal higher-order brain networks: A topological signal processing perspec- tive,
B. C. Bispo, S. Sardellitti, J. B. Lima, and F. A. Santos, “Multimodal higher-order brain networks: A topological signal processing perspec- tive,”arXiv preprint arXiv:2603.29903, 2026
-
[36]
Signal processing on higher-order networks: Livin’on the edge... and beyond,
M. T. Schaub, Y . Zhu, J.-B. Seby, T. M. Roddenberry, and S. Segarra, “Signal processing on higher-order networks: Livin’on the edge... and beyond,”Signal Processing, vol. 187, p. 108149, 2021
work page 2021
-
[37]
Signal processing on simplicial complexes,
M. T. Schaub, J.-B. Seby, F. Frantzen, T. M. Roddenberry, Y . Zhu, and S. Segarra, “Signal processing on simplicial complexes,” inHigher- order systems. Springer, 2022, pp. 301–328
work page 2022
-
[38]
Topological deep learning: Going beyond graph data,
M. Hajij, G. Zamzmi, T. Papamarkou, N. Miolane, A. Guzm ´an-S´aenz, K. N. Ramamurthy, T. Birdal, T. K. Dey, S. Mukherjee, S. N. Samaga et al., “Topological deep learning: Going beyond graph data,”arXiv preprint arXiv:2206.00606, 2022
-
[39]
A. Abiad, A. Arenas, A. Backhausz, J. Balogh, C. R. Banerji, S. Bar- barossa, G. Bianconi, C. Bick, M. B. B. Botnan, T. Carlettiet al., “Hypergraphs and simplicial complexes in focus: A roadmap for future research in higher-order interactions,”Journal of Physics: Complexity, 2026
work page 2026
-
[40]
Don’t be afraid of cell complexes! an introduction from an applied perspective,
J. Hoppe, V . P. Grande, and M. T. Schaub, “Don’t be afraid of cell complexes! an introduction from an applied perspective,”arXiv preprint arXiv:2506.09726, 2025
-
[41]
Topological deep learning challenge 2025: Expanding the data landscape,
G. Bern ´ardez, L. Telyatnikov, M. Papillon, M. Montagna, R. Theiler, L. Cornelis, J. Mathe, M. Ferriol, P. Vasylenko, J.-W. Van Looy et al., “Topological deep learning challenge 2025: Expanding the data landscape,” inTopology, Algebra, and Geometry in Data Science (TAG- DS 2025). PMLR, 2026, pp. 4–14
work page 2025
-
[42]
A. Hatcher,Algebraic Topology. Cambridge, UK: Cambridge Univer- sity Press, 2001, paperback
work page 2001
-
[43]
Algebraic topology for data analysis,
V . Nanda, “Algebraic topology for data analysis,”University of Oxford. Consultado el, vol. 14, 2016
work page 2016
-
[44]
Signal process- ing over time-varying graphs: A systematic review,
Y . Yan, J. Hou, Z. Song, and E. E. Kuruoglu, “Signal process- ing over time-varying graphs: A systematic review,”arXiv preprint arXiv:2412.00462, 2024. 27
-
[45]
K. F. E. Chong and E. Nevo, “Flag complexes and homology,” Journal of Combinatorial Theory, Series A, vol. 182, p. 105466, 2021. [Online]. Available: https://www.sciencedirect.com/science/article/pii/ S0097316521000650
work page 2021
-
[46]
J. R. Munkres, S. G. Krantz, and H. R. Parks,Elements of algebraic topology. Chapman and Hall/CRC, 2025
work page 2025
-
[47]
Com- binatorial and hodge laplacians: similarities and differences,
E. Ribando-Gros, R. Wang, J. Chen, Y . Tong, and G.-W. Wei, “Com- binatorial and hodge laplacians: similarities and differences,”SIAM Review, vol. 66, no. 3, pp. 575–601, 2024
work page 2024
-
[48]
Topo- logical signatures for fast mobility analysis,
A. Ghosh, B. Rozemberczki, S. Ramamoorthy, and R. Sarkar, “Topo- logical signatures for fast mobility analysis,” inProceedings of the 26th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems, 2018, pp. 159–168
work page 2018
-
[49]
Introducing hypergraph signal process- ing: Theoretical foundation and practical applications,
S. Zhang, Z. Ding, and S. Cui, “Introducing hypergraph signal process- ing: Theoretical foundation and practical applications,”IEEE Internet of Things Journal, vol. 7, no. 1, pp. 639–660, 2019
work page 2019
-
[50]
T. Gebhart, X. Fu, and R. J. Funk, “Go with the flow? a large-scale analysis of health care delivery networks in the united states using hodge theory,” in2021 ieee international conference on big data (big data). IEEE, 2021, pp. 3812–3823
work page 2021
-
[51]
M. Cheng, J. Jansen, K. C. Reimer, V . P. Grande, J. S. Nagai, Z. Li, P. Kießling, M. Grasshoff, C. Kuppe, M. T. Schaubet al., “Phlower leverages single-cell multimodal data to infer complex, multi-branching cell differentiation trajectories,”Nature Methods, pp. 1–9, 2025
work page 2025
-
[52]
Discrete differential geometry: An applied introduction,
K. Crane, “Discrete differential geometry: An applied introduction,” Notices of the AMS, Communication, vol. 1153, 2018
work page 2018
-
[53]
R. A. Roberts and C. T. Mullis,Digital signal processing. Addison- Wesley Longman Publishing Co., Inc., 1987
work page 1987
-
[54]
Disentangling the spectral properties of the hodge laplacian: not all small eigenvalues are equal,
V . P. Grande and M. T. Schaub, “Disentangling the spectral properties of the hodge laplacian: not all small eigenvalues are equal,” inICASSP 2024-2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). IEEE, 2024, pp. 9896–9900
work page 2024
-
[55]
Flow smoothing and denoising: Graph signal processing in the edge-space,
M. T. Schaub and S. Segarra, “Flow smoothing and denoising: Graph signal processing in the edge-space,” in2018 IEEE Global Conference on Signal and Information Processing (GlobalSIP). IEEE, 2018, pp. 735–739
work page 2018
-
[56]
Simplicial convolutional neural networks,
M. Yang, E. Isufi, and G. Leus, “Simplicial convolutional neural networks,” inICASSP 2022-2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). IEEE, 2022, pp. 8847–8851
work page 2022
-
[57]
Living on the edge: network neuroscience beyond nodes,
R. F. Betzel, J. Faskowitz, and O. Sporns, “Living on the edge: network neuroscience beyond nodes,”Trends in cognitive sciences, vol. 27, no. 11, pp. 1068–1084, 2023
work page 2023
-
[58]
G. Carlsson and M. Vejdemo-Johansson,Topological data analysis with applications. Cambridge University Press, 2021
work page 2021
-
[59]
L. Wasserman, “Topological data analysis,”Annual review of statistics and its application, vol. 5, no. 2018, pp. 501–532, 2018
work page 2018
-
[60]
Helmholtzian eigenmap: Topological feature discovery & edge flow learning from point cloud data,
Y .-C. Chen, W. Wu, M. Meil ˘a, and I. G. Kevrekidis, “Helmholtzian eigenmap: Topological feature discovery & edge flow learning from point cloud data,”arXiv preprint arXiv:2103.07626, 2021
-
[61]
Connecting the dots: Identifying network structure via graph signal processing,
G. Mateos, S. Segarra, A. G. Marques, and A. Ribeiro, “Connecting the dots: Identifying network structure via graph signal processing,” IEEE Signal Processing Magazine, vol. 36, no. 3, pp. 16–43, 2019
work page 2019
-
[62]
Simplicial complex learning from edge flows via sparse clique sampling,
S. Gurugubelli and S. P. Chepuri, “Simplicial complex learning from edge flows via sparse clique sampling,” in2024 32nd European Signal Processing Conference (EUSIPCO). IEEE, 2024, pp. 2332–2336
work page 2024
-
[63]
Representing edge flows on graphs via sparse cell complexes,
J. Hoppe and M. T. Schaub, “Representing edge flows on graphs via sparse cell complexes,” inLearning on Graphs Conference. PMLR, 2024, pp. 1–1
work page 2024
-
[64]
Cyclicity in multivariate time series and applications to functional mri data,
Y . Baryshnikov and E. Schlafly, “Cyclicity in multivariate time series and applications to functional mri data,” in2016 IEEE 55th conference on decision and control (CDC). IEEE, 2016, pp. 1625–1630
work page 2016
-
[65]
Hemodynamic cortical ripples through cyclicity anal- ysis,
I. Abraham, S. Shahsavarani, B. Zimmerman, F. T. Husain, and Y . Baryshnikov, “Hemodynamic cortical ripples through cyclicity anal- ysis,”Network Neuroscience, vol. 8, no. 4, pp. 1105–1128, 2024
work page 2024
-
[66]
K. Maggs, M. K. Youssef, C. Pulver, J. Isma, T. J. Nguy ˆen, M. Arzt, W. Karthaus, H. A. Harrington, K. Hess, and G. P. Dotto, “Topology identifies concurrent cyclic processes in single-cell transcriptomics and androgen receptor function,”bioRxiv, pp. 2025–01, 2025
work page 2025
-
[67]
B. J. Zimmerman, I. Abraham, S. A. Schmidt, Y . Baryshnikov, and F. T. Husain, “Dissociating tinnitus patients from healthy controls using resting-state cyclicity analysis and clustering,”Network Neuroscience, vol. 3, no. 1, pp. 67–89, 2018
work page 2018
-
[68]
Graph signal processing for neurogimaging to reveal dynamics of brain structure-function coupling,
M. G. Preti, T. A. Bolton, A. Griffa, and D. Van De Ville, “Graph signal processing for neurogimaging to reveal dynamics of brain structure-function coupling,” inICASSP 2023-2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). IEEE, 2023, pp. 1–5
work page 2023
-
[69]
Higher-order organization of multivariate time series,
A. Santoro, F. Battiston, G. Petri, and E. Amico, “Higher-order organization of multivariate time series,”Nature Physics, vol. 19, no. 2, pp. 221–229, 2023
work page 2023
-
[70]
Multivariate information theory uncovers synergistic subsystems of the human cerebral cortex,
T. F. Varley, M. Pope, J. Faskowitz, and O. Sporns, “Multivariate information theory uncovers synergistic subsystems of the human cerebral cortex,”Communications biology, vol. 6, no. 1, p. 451, 2023
work page 2023
-
[71]
Information decomposition reveals hidden high-order con- tributions to temporal irreversibility,
A. I. Luppi, F. E. Rosas, G. Deco, M. L. Kringelbach, and P. A. Mediano, “Information decomposition reveals hidden high-order con- tributions to temporal irreversibility,”arXiv preprint arXiv:2308.05664, 2023
-
[72]
A. Santoro, F. Battiston, M. Lucas, G. Petri, and E. Amico, “Higher- order connectomics of human brain function reveals local topological signatures of task decoding, individual identification, and behavior,” Nature Communications, vol. 15, no. 1, p. 10244, 2024
work page 2024
-
[73]
T. F. Varley, P. A. Mediano, A. Patania, and J. Bongard, “The topology of synergy: linking topological and information-theoretic approaches to higher-order interactions in complex systems,”arXiv preprint arXiv:2504.10140, 2025
-
[74]
Higher-order description of brain function,
P. Expert and G. Petri, “Higher-order description of brain function,” in Higher-Order Systems. Springer, 2022, pp. 401–415
work page 2022
-
[75]
O. Roy, Y . Moshfeghi, J. Smith, A. Ibanez, M. A. Parra, and K. M. Smith, “A hodge-fast framework for high-resolution dynamic functional connectivity analysis of higher order interactions in eeg signals,”arXiv preprint arXiv:2502.00249, 2025
-
[76]
Structure–function coupling in macroscale human brain networks,
P. Fotiadis, L. Parkes, K. A. Davis, T. D. Satterthwaite, R. T. Shinohara, and D. S. Bassett, “Structure–function coupling in macroscale human brain networks,”Nature Reviews Neuroscience, vol. 25, no. 10, pp. 688–704, 2024
work page 2024
-
[77]
Linking structure and function in macroscale brain networks,
L. E. Su ´arez, R. D. Markello, R. F. Betzel, and B. Misic, “Linking structure and function in macroscale brain networks,”Trends in cogni- tive sciences, vol. 24, no. 4, pp. 302–315, 2020
work page 2020
-
[78]
Decoupling of brain function from structure reveals regional behavioral specialization in humans,
M. G. Preti and D. Van De Ville, “Decoupling of brain function from structure reveals regional behavioral specialization in humans,”Nature communications, vol. 10, no. 1, p. 4747, 2019
work page 2019
-
[79]
R. Li ´egeois, A. Santos, V . Matta, D. Van De Ville, and A. H. Sayed, “Revisiting correlation-based functional connectivity and its relationship with structural connectivity,”Network Neuroscience, vol. 4, no. 4, pp. 1235–1251, 2020
work page 2020
-
[80]
Basic principles of diffusion-weighted imaging,
R. Bammer, “Basic principles of diffusion-weighted imaging,”Euro- pean journal of radiology, vol. 45, no. 3, pp. 169–184, 2003
work page 2003
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.