AICELGCOLODec 2, 2024

Superhypergraph Neural Networks and Plithogenic Graph Neural Networks: Theoretical Foundations

arXiv:2412.01176v117 citationsh-index: 3
Originality Synthesis-oriented
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This work addresses the problem of modeling complex relationships in graph-based data for researchers in machine learning and graph theory, but it is incremental as it builds on existing hypergraph and plithogenic graph frameworks.

This paper establishes theoretical foundations for SuperHyperGraph Neural Networks (SHGNNs) and Plithogenic Graph Neural Networks, tackling the problem of extending neural networks to advanced graph structures like superhypergraphs and plithogenic graphs, with results presented as mathematical generalizations and proofs.

Hypergraphs extend traditional graphs by allowing edges to connect multiple nodes, while superhypergraphs further generalize this concept to represent even more complex relationships. Neural networks, inspired by biological systems, are widely used for tasks such as pattern recognition, data classification, and prediction. Graph Neural Networks (GNNs), a well-established framework, have recently been extended to Hypergraph Neural Networks (HGNNs), with their properties and applications being actively studied. The Plithogenic Graph framework enhances graph representations by integrating multi-valued attributes, as well as membership and contradiction functions, enabling the detailed modeling of complex relationships. In the context of handling uncertainty, concepts such as Fuzzy Graphs and Neutrosophic Graphs have gained prominence. It is well established that Plithogenic Graphs serve as a generalization of both Fuzzy Graphs and Neutrosophic Graphs. Furthermore, the Fuzzy Graph Neural Network has been proposed and is an active area of research. This paper establishes the theoretical foundation for the development of SuperHyperGraph Neural Networks (SHGNNs) and Plithogenic Graph Neural Networks, expanding the applicability of neural networks to these advanced graph structures. While mathematical generalizations and proofs are presented, future computational experiments are anticipated.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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