Multimodal deep learning on hypergraphs

Open Access
Authors
Supervisors
Award date 17-06-2022
Number of pages 114
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract This thesis investigates the potential of hypergraphs for capturing higher-order relations between objects in a multimodal dataset. These relations are often sub-optimally represented by pairwise connections used in a graph. Hence, in order to unlock the full potential of relational information within a multimodal dataset, this thesis proposes several geometric deep learning approaches for capturing and learning higher-order relations.
Document type PhD thesis
Language English
Downloads
Permalink to this page
cover
Back