Centrality informed embedding of networks for temporal feature extraction

We propose a two-step methodology for exploring the tem- poral characteristics of a network. First, we construct a graph time series, where each snapshot is the result of a temporal whole-graph embedding. The embedding is carried out using the degree, Katz and betweenness centralities to charact...

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Main Authors: Oggier, Frédérique, Datta, Anwitaman
Other Authors: School of Physical and Mathematical Sciences
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/154815
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1548152023-02-28T19:49:27Z Centrality informed embedding of networks for temporal feature extraction Oggier, Frédérique Datta, Anwitaman School of Physical and Mathematical Sciences School of Computer Science and Engineering Science::Mathematics Engineering::Computer science and engineering Social Network Dynamics Time Series of Graphs Centrality We propose a two-step methodology for exploring the tem- poral characteristics of a network. First, we construct a graph time series, where each snapshot is the result of a temporal whole-graph embedding. The embedding is carried out using the degree, Katz and betweenness centralities to characterize first and higher order proximities among ver- tices. Then a principal component analysis is performed over the collected temporal graph samples, which exhibits eigengraphs, graphs whose tem- poral weight variations model the sampled graph series. Analysis of the temporal timeline of each of the main eigengraphs reveals moments of importance in terms of structural graph changes. Parameters such as the dimension of the embeddings and the number of temporal samples are explored. Two case studies are presented: a Bitcoin subgraph, where findings are cross-checked by looking at the subgraph behavior itself, and the Enron email network, which allows us to compare our findings with prior studies. In both cases, the proposed methodology successfully identified temporal structural changes in the graph evolution. Accepted version 2022-01-11T03:02:32Z 2022-01-11T03:02:32Z 2021 Journal Article Oggier, F. & Datta, A. (2021). Centrality informed embedding of networks for temporal feature extraction. Social Network Analysis and Mining, 11, 12-. https://dx.doi.org/10.1007/s13278-021-00720-8 1869-5450 https://hdl.handle.net/10356/154815 10.1007/s13278-021-00720-8 11 12 en Social Network Analysis and Mining 10.21979/N9/9NK2DD © 2021 Springer. This is a post-peer-review, pre-copyedit version of an article published in Social Network Analysis and Mining. The final authenticated version is available online at: http://dx.doi.org/10.1007/s13278-021-00720-8. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Mathematics
Engineering::Computer science and engineering
Social Network Dynamics
Time Series of Graphs
Centrality
spellingShingle Science::Mathematics
Engineering::Computer science and engineering
Social Network Dynamics
Time Series of Graphs
Centrality
Oggier, Frédérique
Datta, Anwitaman
Centrality informed embedding of networks for temporal feature extraction
description We propose a two-step methodology for exploring the tem- poral characteristics of a network. First, we construct a graph time series, where each snapshot is the result of a temporal whole-graph embedding. The embedding is carried out using the degree, Katz and betweenness centralities to characterize first and higher order proximities among ver- tices. Then a principal component analysis is performed over the collected temporal graph samples, which exhibits eigengraphs, graphs whose tem- poral weight variations model the sampled graph series. Analysis of the temporal timeline of each of the main eigengraphs reveals moments of importance in terms of structural graph changes. Parameters such as the dimension of the embeddings and the number of temporal samples are explored. Two case studies are presented: a Bitcoin subgraph, where findings are cross-checked by looking at the subgraph behavior itself, and the Enron email network, which allows us to compare our findings with prior studies. In both cases, the proposed methodology successfully identified temporal structural changes in the graph evolution.
author2 School of Physical and Mathematical Sciences
author_facet School of Physical and Mathematical Sciences
Oggier, Frédérique
Datta, Anwitaman
format Article
author Oggier, Frédérique
Datta, Anwitaman
author_sort Oggier, Frédérique
title Centrality informed embedding of networks for temporal feature extraction
title_short Centrality informed embedding of networks for temporal feature extraction
title_full Centrality informed embedding of networks for temporal feature extraction
title_fullStr Centrality informed embedding of networks for temporal feature extraction
title_full_unstemmed Centrality informed embedding of networks for temporal feature extraction
title_sort centrality informed embedding of networks for temporal feature extraction
publishDate 2022
url https://hdl.handle.net/10356/154815
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