Evolving network representation learning based on random walks.

Dynamic graph embedding Dynamic random walks Evolving networks Network representation learning

Journal

Applied network science
ISSN: 2364-8228
Titre abrégé: Appl Netw Sci
Pays: Switzerland
ID NLM: 101732938

Informations de publication

Date de publication:
2020
Historique:
received: 29 03 2019
accepted: 12 02 2020
entrez: 28 3 2020
pubmed: 28 3 2020
medline: 28 3 2020
Statut: ppublish

Résumé

Large-scale network mining and analysis is key to revealing the underlying dynamics of networks, not easily observable before. Lately, there is a fast-growing interest in learning low-dimensional continuous representations of networks that can be utilized to perform highly accurate and scalable graph mining tasks. A family of these methods is based on performing random walks on a network to learn its structural features and providing the sequence of random walks as input to a deep learning architecture to learn a network embedding. While these methods perform well, they can only operate on static networks. However, in real-world, networks are evolving, as nodes and edges are continuously added or deleted. As a result, any previously obtained network representation will now be outdated having an adverse effect on the accuracy of the network mining task at stake. The naive approach to address this problem is to re-apply the embedding method of choice every time there is an update to the network. But this approach has serious drawbacks. First, it is inefficient, because the embedding method itself is computationally expensive. Then, the network mining task outcome obtained by the subsequent network representations are not directly comparable to each other, due to the randomness involved in the new set of random walks involved each time. In this paper, we propose EvoNRL, a random-walk based method for learning representations of evolving networks. The key idea of our approach is to first obtain a set of random walks on the current state of network. Then, while changes occur in the evolving network's topology, to dynamically update the random walks in reserve, so they do not introduce any bias. That way we are in position of utilizing the updated set of random walks to continuously learn accurate mappings from the evolving network to a low-dimension network representation. Moreover, we present an analytical method for determining the right time to obtain a new representation of the evolving network that balances accuracy and time performance. A thorough experimental evaluation is performed that demonstrates the effectiveness of our method against sensible baselines and varying conditions.

Identifiants

pubmed: 32215318
doi: 10.1007/s41109-020-00257-3
pii: 257
pmc: PMC7081665
doi:

Types de publication

Journal Article

Langues

eng

Pagination

18

Informations de copyright

© The Author(s) 2020.

Déclaration de conflit d'intérêts

Competing InterestsThe authors declare that they have no competing interests.

Références

Nucleic Acids Res. 2008 Jan;36(Database issue):D637-40
pubmed: 18000002
IEEE Trans Pattern Anal Mach Intell. 2013 Aug;35(8):1798-828
pubmed: 23787338
KDD. 2016 Aug;2016:855-864
pubmed: 27853626

Auteurs

Farzaneh Heidari (F)

York University, Toronto, M3J1P3 ON Canada.

Manos Papagelis (M)

York University, Toronto, M3J1P3 ON Canada.

Classifications MeSH