Algorithmic advances for the adjacency spectral embedding
Resumen:
The Random Dot Product Graph (RDPG) is a popular generative graph model for relational data. RDPGs postulate there exist latent positions for each node, and specifies the edge formation probabilities via the inner product of the corresponding latent vectors. The embedding task of estimating these latent positions from observed graphs is usually posed as a non-convex matrix factorization problem. The workhorse Adjacency Spectral Embedding offers an approximate solution obtained via the eigendecomposition of the adjacency matrix, which enjoys solid statistical guarantees but can be computationally intensive and is formally solving a surrogate problem. In this paper, we bring to bear recent non-convex optimization advances and demonstrate their impact to RDPG inference. We develop first-order gradient descent methods to better solve the original optimization problem, and to accommodate broader network embedding applications in an organic way. The effectiveness of the resulting graph representation learning framework is demonstrated on both synthetic and real data. We show the algorithms are scalable, robust to missing network data, and can track the latent positions over time when the graphs are acquired in a streaming fashion.
2022 | |
Este trabajo fue parcialmente financiado por la NSF (fondo CCF-1750428 y ECCS-1809356) | |
Representation learning Signal processing algorithms Europe Signal processing Probability Solids Inference algorithms Graph Representation Learning Gradient Descent Non-convex Optimization Random Dot Product Graphs |
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Inglés | |
Universidad de la República | |
COLIBRI | |
https://ieeexplore.ieee.org/document/9909610
https://hdl.handle.net/20.500.12008/35237 |
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Acceso abierto | |
Licencia Creative Commons Atribución - No Comercial - Sin Derivadas (CC - By-NC-ND 4.0) |
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author | Fiori, Marcelo |
author2 | Marenco, Bernardo Larroca, Federico Bermolen, Paola Mateos, Gonzalo |
author2_role | author author author author |
author_facet | Fiori, Marcelo Marenco, Bernardo Larroca, Federico Bermolen, Paola Mateos, Gonzalo |
author_role | author |
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collection | COLIBRI |
dc.contributor.filiacion.none.fl_str_mv | Fiori Marcelo, Universidad de la República (Uruguay). Facultad de Ingeniería. Marenco Bernardo, Universidad de la República (Uruguay). Facultad de Ingeniería. Larroca Federico, Universidad de la República (Uruguay). Facultad de Ingeniería. Bermolen Paola, Universidad de la República (Uruguay). Facultad de Ingeniería. Mateos Gonzalo, University of Rochester, Rochester, NY, USA |
dc.creator.none.fl_str_mv | Fiori, Marcelo Marenco, Bernardo Larroca, Federico Bermolen, Paola Mateos, Gonzalo |
dc.date.accessioned.none.fl_str_mv | 2022-12-12T16:08:37Z |
dc.date.available.none.fl_str_mv | 2022-12-12T16:08:37Z |
dc.date.issued.none.fl_str_mv | 2022 |
dc.description.abstract.none.fl_txt_mv | The Random Dot Product Graph (RDPG) is a popular generative graph model for relational data. RDPGs postulate there exist latent positions for each node, and specifies the edge formation probabilities via the inner product of the corresponding latent vectors. The embedding task of estimating these latent positions from observed graphs is usually posed as a non-convex matrix factorization problem. The workhorse Adjacency Spectral Embedding offers an approximate solution obtained via the eigendecomposition of the adjacency matrix, which enjoys solid statistical guarantees but can be computationally intensive and is formally solving a surrogate problem. In this paper, we bring to bear recent non-convex optimization advances and demonstrate their impact to RDPG inference. We develop first-order gradient descent methods to better solve the original optimization problem, and to accommodate broader network embedding applications in an organic way. The effectiveness of the resulting graph representation learning framework is demonstrated on both synthetic and real data. We show the algorithms are scalable, robust to missing network data, and can track the latent positions over time when the graphs are acquired in a streaming fashion. |
dc.description.sponsorship.none.fl_txt_mv | Este trabajo fue parcialmente financiado por la NSF (fondo CCF-1750428 y ECCS-1809356) |
dc.format.extent.es.fl_str_mv | 5 p. |
dc.format.mimetype.es.fl_str_mv | application/pdf |
dc.identifier.citation.es.fl_str_mv | Fiori, M., Marenco, B., Larroca, F. y otros. Algorithmic advances for the adjacency spectral embedding [en línea]. EN: 2022 30th European Signal Processing Conference (EUSIPCO), Belgrade, Serbia, 29 aug.-2 sep. 2022, pp. 672-676. |
dc.identifier.uri.none.fl_str_mv | https://ieeexplore.ieee.org/document/9909610 https://hdl.handle.net/20.500.12008/35237 |
dc.language.iso.none.fl_str_mv | en eng |
dc.publisher.es.fl_str_mv | IEEE |
dc.relation.ispartof.es.fl_str_mv | 2022 30th European Signal Processing Conference (EUSIPCO), Belgrade, Serbia, 29 aug.-2 sep. 2022, pp. 672-676. |
dc.rights.license.none.fl_str_mv | Licencia Creative Commons Atribución - No Comercial - Sin Derivadas (CC - By-NC-ND 4.0) |
dc.rights.none.fl_str_mv | info:eu-repo/semantics/openAccess |
dc.source.none.fl_str_mv | reponame:COLIBRI instname:Universidad de la República instacron:Universidad de la República |
dc.subject.es.fl_str_mv | Representation learning Signal processing algorithms Europe Signal processing Probability Solids Inference algorithms Graph Representation Learning Gradient Descent Non-convex Optimization Random Dot Product Graphs |
dc.title.none.fl_str_mv | Algorithmic advances for the adjacency spectral embedding |
dc.type.es.fl_str_mv | Ponencia |
dc.type.none.fl_str_mv | info:eu-repo/semantics/conferenceObject |
dc.type.version.none.fl_str_mv | info:eu-repo/semantics/publishedVersion |
description | The Random Dot Product Graph (RDPG) is a popular generative graph model for relational data. RDPGs postulate there exist latent positions for each node, and specifies the edge formation probabilities via the inner product of the corresponding latent vectors. The embedding task of estimating these latent positions from observed graphs is usually posed as a non-convex matrix factorization problem. The workhorse Adjacency Spectral Embedding offers an approximate solution obtained via the eigendecomposition of the adjacency matrix, which enjoys solid statistical guarantees but can be computationally intensive and is formally solving a surrogate problem. In this paper, we bring to bear recent non-convex optimization advances and demonstrate their impact to RDPG inference. We develop first-order gradient descent methods to better solve the original optimization problem, and to accommodate broader network embedding applications in an organic way. The effectiveness of the resulting graph representation learning framework is demonstrated on both synthetic and real data. We show the algorithms are scalable, robust to missing network data, and can track the latent positions over time when the graphs are acquired in a streaming fashion. |
eu_rights_str_mv | openAccess |
format | conferenceObject |
id | COLIBRI_52fb42b703735057643aa32da2140641 |
identifier_str_mv | Fiori, M., Marenco, B., Larroca, F. y otros. Algorithmic advances for the adjacency spectral embedding [en línea]. EN: 2022 30th European Signal Processing Conference (EUSIPCO), Belgrade, Serbia, 29 aug.-2 sep. 2022, pp. 672-676. |
instacron_str | Universidad de la República |
institution | Universidad de la República |
instname_str | Universidad de la República |
language | eng |
language_invalid_str_mv | en |
network_acronym_str | COLIBRI |
network_name_str | COLIBRI |
oai_identifier_str | oai:colibri.udelar.edu.uy:20.500.12008/35237 |
publishDate | 2022 |
reponame_str | COLIBRI |
repository.mail.fl_str_mv | mabel.seroubian@seciu.edu.uy |
repository.name.fl_str_mv | COLIBRI - Universidad de la República |
repository_id_str | 4771 |
rights_invalid_str_mv | Licencia Creative Commons Atribución - No Comercial - Sin Derivadas (CC - By-NC-ND 4.0) |
spelling | Fiori Marcelo, Universidad de la República (Uruguay). Facultad de Ingeniería.Marenco Bernardo, Universidad de la República (Uruguay). Facultad de Ingeniería.Larroca Federico, Universidad de la República (Uruguay). Facultad de Ingeniería.Bermolen Paola, Universidad de la República (Uruguay). Facultad de Ingeniería.Mateos Gonzalo, University of Rochester, Rochester, NY, USA2022-12-12T16:08:37Z2022-12-12T16:08:37Z2022Fiori, M., Marenco, B., Larroca, F. y otros. Algorithmic advances for the adjacency spectral embedding [en línea]. EN: 2022 30th European Signal Processing Conference (EUSIPCO), Belgrade, Serbia, 29 aug.-2 sep. 2022, pp. 672-676.https://ieeexplore.ieee.org/document/9909610https://hdl.handle.net/20.500.12008/35237The Random Dot Product Graph (RDPG) is a popular generative graph model for relational data. RDPGs postulate there exist latent positions for each node, and specifies the edge formation probabilities via the inner product of the corresponding latent vectors. The embedding task of estimating these latent positions from observed graphs is usually posed as a non-convex matrix factorization problem. The workhorse Adjacency Spectral Embedding offers an approximate solution obtained via the eigendecomposition of the adjacency matrix, which enjoys solid statistical guarantees but can be computationally intensive and is formally solving a surrogate problem. In this paper, we bring to bear recent non-convex optimization advances and demonstrate their impact to RDPG inference. We develop first-order gradient descent methods to better solve the original optimization problem, and to accommodate broader network embedding applications in an organic way. The effectiveness of the resulting graph representation learning framework is demonstrated on both synthetic and real data. We show the algorithms are scalable, robust to missing network data, and can track the latent positions over time when the graphs are acquired in a streaming fashion.Submitted by Ribeiro Jorge (jribeiro@fing.edu.uy) on 2022-12-07T17:52:07Z No. of bitstreams: 2 license_rdf: 23149 bytes, checksum: 1996b8461bc290aef6a27d78c67b6b52 (MD5) FMLBM22.pdf: 756073 bytes, checksum: 11ace335ec86e3d95052ad696ee8adcd (MD5)Approved for entry into archive by Machado Jimena (jmachado@fing.edu.uy) on 2022-12-12T16:06:57Z (GMT) No. of bitstreams: 2 license_rdf: 23149 bytes, checksum: 1996b8461bc290aef6a27d78c67b6b52 (MD5) FMLBM22.pdf: 756073 bytes, checksum: 11ace335ec86e3d95052ad696ee8adcd (MD5)Made available in DSpace by Luna Fabiana (fabiana.luna@seciu.edu.uy) on 2022-12-12T16:08:37Z (GMT). No. of bitstreams: 2 license_rdf: 23149 bytes, checksum: 1996b8461bc290aef6a27d78c67b6b52 (MD5) FMLBM22.pdf: 756073 bytes, checksum: 11ace335ec86e3d95052ad696ee8adcd (MD5) Previous issue date: 2022Este trabajo fue parcialmente financiado por la NSF (fondo CCF-1750428 y ECCS-1809356)5 p.application/pdfenengIEEE2022 30th European Signal Processing Conference (EUSIPCO), Belgrade, Serbia, 29 aug.-2 sep. 2022, pp. 672-676.Las obras depositadas en el Repositorio se rigen por la Ordenanza de los Derechos de la Propiedad Intelectual de la Universidad de la República.(Res. Nº 91 de C.D.C. de 8/III/1994 – D.O. 7/IV/1994) y por la Ordenanza del Repositorio Abierto de la Universidad de la República (Res. 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- Universidad de la Repúblicafalse |
spellingShingle | Algorithmic advances for the adjacency spectral embedding Fiori, Marcelo Representation learning Signal processing algorithms Europe Signal processing Probability Solids Inference algorithms Graph Representation Learning Gradient Descent Non-convex Optimization Random Dot Product Graphs |
status_str | publishedVersion |
title | Algorithmic advances for the adjacency spectral embedding |
title_full | Algorithmic advances for the adjacency spectral embedding |
title_fullStr | Algorithmic advances for the adjacency spectral embedding |
title_full_unstemmed | Algorithmic advances for the adjacency spectral embedding |
title_short | Algorithmic advances for the adjacency spectral embedding |
title_sort | Algorithmic advances for the adjacency spectral embedding |
topic | Representation learning Signal processing algorithms Europe Signal processing Probability Solids Inference algorithms Graph Representation Learning Gradient Descent Non-convex Optimization Random Dot Product Graphs |
url | https://ieeexplore.ieee.org/document/9909610 https://hdl.handle.net/20.500.12008/35237 |