2024
DOI: 10.5753/jis.2024.4109
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Unsupervised Heterogeneous Graph Neural Networks for One-Class Tasks: Exploring Early Fusion Operators

Marcos Paulo Silva Gôlo,
Marcelo Isaias De Moraes Junior,
Rudinei Goularte
et al.

Abstract: Heterogeneous graphs are an essential structure that models real-world data through different types of nodes and relationships between them, including multimodality, which comprises different types of data such as text, image, and audio. Graph Neural Networks (GNNs) are a prominent graph representation learning method that takes advantage of the graph structure and its attributes that, when applied to the multimodal heterogeneous graph, learn a unique semantic space for the different modalities. Consequently, … Show more

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