Sie befinden Sich nicht im Netzwerk der Universität Paderborn. Der Zugriff auf elektronische Ressourcen ist gegebenenfalls nur via VPN oder Shibboleth (DFN-AAI) möglich. mehr Informationen...
Ergebnis 25 von 1180
Future generation computer systems, 2023-04, Vol.141, p.143-153
2023

Details

Autor(en) / Beteiligte
Titel
A robust feature reinforcement framework for heterogeneous graphs neural networks
Ist Teil von
  • Future generation computer systems, 2023-04, Vol.141, p.143-153
Ort / Verlag
Elsevier B.V
Erscheinungsjahr
2023
Link zum Volltext
Quelle
Elsevier ScienceDirect Journals Complete
Beschreibungen/Notizen
  • In the real world, various kinds of data are able to be represented as heterogeneous graph structures. Heterogeneous graphs with multi-typed nodes and edges contain rich messages of heterogeneity and complex semantic information. Recently, diverse heterogeneous graph neural networks (HGNNs) have emerged to solve a range of tasks in this advanced area, such as node classification, knowledge graphs, etc. Heterogeneous graph embedding is a crucial step in HGNNs. It aims to embed rich information from heterogeneous graphs into low-dimensional eigenspaces to improve the performance of downstream tasks. Yet existing methods only project high-dimensional node features into the same low-dimensional space and subsequently aggregate those heterogeneous features directly. This approach ignores the balance between the informative dimensions and the redundant dimensions in the hidden layers. Further, after the dimensionality has been reduced, all kinds of nodes features are projected into the same eigenspace but in a mixed up fashion. One final problem with HGNNs is that their experimental results are always unstable and not reproducible. To solve these issues, we design a general framework named Robust Feature Reinforcement (RFR) for HGNNs to optimize embedding performance. RFR consists of three mechanisms: separate mapping, co-segregating and population-based bandits. The separate mapping mechanism improves the ability to preserve the most informative dimensions when projecting high-dimensional vectors into a low-dimensional eigenspace. The co-segregating mechanism minimizes the contrastive loss to ensure there is a distinction between the features extracted from different types of nodes in the latent feature layers. The population-based bandits mechanism further assures the stability of the experimental results with classification tasks. Supported by rigorous experimentation on three datasets, we assessed the performance of the designed framework and can verify that our models outperform the current state-of-the-arts. •Propose a framework called Robust Feature Reinforcement (RFR) for heterogeneous graph embedding.•Present a separate mapping mechanism to preserve informative dimensions when dimensionality reducing.•Design a co-segregating mechanism to assure a distinction between the features in the latent layers.•Adopt population-based bandits to ensure the stability of the experimental results.
Sprache
Englisch
Identifikatoren
ISSN: 0167-739X
eISSN: 1872-7115
DOI: 10.1016/j.future.2022.11.009
Titel-ID: cdi_crossref_primary_10_1016_j_future_2022_11_009

Weiterführende Literatur

Empfehlungen zum selben Thema automatisch vorgeschlagen von bX