Structural network analysis retrieves the holistic patterns of interactions among network instances. Due to the unprecedented growth of data availability, it is time to take advantage of Machine Learning to integrate the outcome of the structural analysis with better predictions on the upcoming states of large networks. Concerning the existing challenges of adopting methods embracing multi-dimensional, multi-task, transparent representations within incremental procedures, in our recent study, we proposed the AVPRA algorithm. It works as an embedder of both the network structure and domain-specific features making the aforementioned challenges feasible to address. In this paper, we elaborate on the validation of AVPRA by adopting it in multiple downstream Machine Learning tasks on the Twitter network of the Italian Parliament. Comparing the outcome with state-of-the-art algorithms of graph embedding, the capability of AVPRA in retaining either network structure properties or domain-specific features of the nodes is promising. In addition, the method is incremental and transparent.
Validating Vector-Label Propagation for Graph Embedding / V. Bellandi, E. Damiani, V. Ghirimoldi, S. Maghool, F. Negri (LECTURE NOTES IN COMPUTER SCIENCE). - In: Cooperative Information Systems / [a cura di] M. Sellami, P. Ceravolo, H.A. Reijers, W. Gaaloul, H. Panetto. - [s.l] : Springer nature, 2022 Sep. - ISBN 978-3-031-17833-7. - pp. 259-276 (( Intervento presentato al 28. convegno CoopIS tenutosi a Bolzano nel 2022 [10.1007/978-3-031-17834-4_15].
Validating Vector-Label Propagation for Graph Embedding
V. Bellandi;E. Damiani;S. Maghool
;F. Negri
2022
Abstract
Structural network analysis retrieves the holistic patterns of interactions among network instances. Due to the unprecedented growth of data availability, it is time to take advantage of Machine Learning to integrate the outcome of the structural analysis with better predictions on the upcoming states of large networks. Concerning the existing challenges of adopting methods embracing multi-dimensional, multi-task, transparent representations within incremental procedures, in our recent study, we proposed the AVPRA algorithm. It works as an embedder of both the network structure and domain-specific features making the aforementioned challenges feasible to address. In this paper, we elaborate on the validation of AVPRA by adopting it in multiple downstream Machine Learning tasks on the Twitter network of the Italian Parliament. Comparing the outcome with state-of-the-art algorithms of graph embedding, the capability of AVPRA in retaining either network structure properties or domain-specific features of the nodes is promising. In addition, the method is incremental and transparent.File | Dimensione | Formato | |
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