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Abstract Deep learning has seen significant growth recently and is now applied to a wide range of conventional use cases, including graphs. Graph data provides relational information between elements and is a standard data format for various machine learning and deep learning tasks. Models that can learn from such inputs are essential for working with graph data effectively. This paper identifies nodes and edges within specific applications, such as text, entities, and relations, to create graph structures. Different applications may require various graph neural network (GNN) models. GNNs facilitate the exchange of information between nodes in a graph, enabling them to understand dependencies within the nodes and edges. The paper delves into specific GNN models like graph convolution networks (GCNs), GraphSAGE, and graph attention networks (GATs), which are widely used in various applications today. It also discusses the message-passing mechanism employed by GNN models and examines the strengths and limitations of these models in different domains. Furthermore, the paper explores the diverse applications of GNNs, the datasets commonly used with them, and the Python libraries that support GNN models. It offers an extensive overview of the landscape of GNN research and its practical implementations.
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Bharti Khemani
Technological Educational Institute of Eastern Macedonia and Thrace
Shruti Patil
Defence Institute of Advanced Technology
Ketan Kotecha
Symbiosis International University
SHILAP Revista de lepidopterología
Journal Of Big Data
Symbiosis International University
Nirma University
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Khemani et al. (Tue,) studied this question.
synapsesocial.com/papers/69da2abc94a959ed41a3c2dc — DOI: https://doi.org/10.1186/s40537-023-00876-4