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Graph signal processing for machine learning: A review and new
  perspectives

Graph signal processing for machine learning: A review and new perspectives

31 July 2020
Xiaowen Dong
D. Thanou
Laura Toni
M. Bronstein
P. Frossard
ArXivPDFHTML

Papers citing "Graph signal processing for machine learning: A review and new perspectives"

13 / 13 papers shown
Title
Learning Sheaf Laplacian Optimizing Restriction Maps
Learning Sheaf Laplacian Optimizing Restriction Maps
Leonardo Di Nino
Sergio Barbarossa
P. Di Lorenzo
47
0
0
31 Jan 2025
A Review of Graph-Powered Data Quality Applications for IoT Monitoring Sensor Networks
A Review of Graph-Powered Data Quality Applications for IoT Monitoring Sensor Networks
Pau Ferrer-Cid
Jose M. Barcelo-Ordinas
J. García-Vidal
37
2
0
28 Oct 2024
Learning signals defined on graphs with optimal transport and Gaussian process regression
Learning signals defined on graphs with optimal transport and Gaussian process regression
Raphael Carpintero Perez
Sébastien da Veiga
Josselin Garnier
B. Staber
28
1
0
21 Oct 2024
Online Graph Filtering Over Expanding Graphs
Online Graph Filtering Over Expanding Graphs
Bishwadeep Das
Elvin Isufi
23
0
0
11 Sep 2024
Bayesian Optimization of Functions over Node Subsets in Graphs
Bayesian Optimization of Functions over Node Subsets in Graphs
Huidong Liang
Xingchen Wan
Xiaowen Dong
40
1
0
24 May 2024
Through the Dual-Prism: A Spectral Perspective on Graph Data Augmentation for Graph Classification
Through the Dual-Prism: A Spectral Perspective on Graph Data Augmentation for Graph Classification
Yutong Xia
Runpeng Yu
Yuxuan Liang
Xavier Bresson
Xinchao Wang
Roger Zimmermann
35
4
0
18 Jan 2024
Learning the hub graphical Lasso model with the structured sparsity via an efficient algorithm
Learning the hub graphical Lasso model with the structured sparsity via an efficient algorithm
Chengjing Wang
Peipei Tang
Wen-Bin He
Meixia Lin
22
0
0
17 Aug 2023
Graph Federated Learning for CIoT Devices in Smart Home Applications
Graph Federated Learning for CIoT Devices in Smart Home Applications
Arash Rasti-Meymandi
S. M. Sheikholeslami
J. Abouei
Konstantinos N. Plataniotis
FedML
15
18
0
29 Dec 2022
Challenges in anomaly and change point detection
Challenges in anomaly and change point detection
Madalina Olteanu
Fabrice Rossi
Florian Yger
14
0
0
27 Dec 2022
Laplacian Constrained Precision Matrix Estimation: Existence and High
  Dimensional Consistency
Laplacian Constrained Precision Matrix Estimation: Existence and High Dimensional Consistency
E. Pavez
9
4
0
31 Oct 2021
How Powerful is Graph Convolution for Recommendation?
How Powerful is Graph Convolution for Recommendation?
Yifei Shen
Yongji Wu
Yao Zhang
Caihua Shan
Jun Zhang
Khaled B. Letaief
Dongsheng Li
GNN
13
99
0
17 Aug 2021
Geometric deep learning on graphs and manifolds using mixture model CNNs
Geometric deep learning on graphs and manifolds using mixture model CNNs
Federico Monti
Davide Boscaini
Jonathan Masci
Emanuele Rodolà
Jan Svoboda
M. Bronstein
GNN
234
1,801
0
25 Nov 2016
Geometric deep learning: going beyond Euclidean data
Geometric deep learning: going beyond Euclidean data
M. Bronstein
Joan Bruna
Yann LeCun
Arthur Szlam
P. Vandergheynst
GNN
231
3,202
0
24 Nov 2016
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