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The following is a learning outline suitable for getting started with graph neural network (GNN) technology:1. Graph Theory BasicsBasic concepts of graphs : Understand the definition of graphs, nodes, edges, adjacency matrix and other basic concepts.Graph representation methods : Learn common graph representation methods, such as adjacency list, adjacency matrix, etc.2. Graph Data ProcessingGraph data preprocessing : Understand graph data preprocessing methods, including node feature processing, graph structure processing, etc.Graph Data Visualization : Learn how to visualize graph data to better understand the structure and characteristics of the graph.3. Graph Neural Network BasicsGraph Convolutional Neural Networks (GCN) : Learn the basic principles and structures of graph convolutional neural networks.Message Passing Network (MPNN) : Understand the principles and applications of message passing networks, as well as the differences and connections with GCN.4. Graph Neural Network ApplicationsNode Classification : Learn how to use graph neural networks for node classification tasks, such as user classification in social networks.Graph Classification : Learn how to use graph neural networks for graph classification tasks such as molecular graph classification.5. Practical ProjectsLearning projects : Select some classic graph neural network projects, such as node classification, graph classification, etc., to deepen your understanding of the theory through practice.Personal Project : Design and implement a personal project based on your area of interest, such as image segmentation, recommendation system, etc.6. Advanced LearningGraph Attention Network (GAT) : Understand the principles and applications of graph attention networks, as well as the differences and connections with GCN.Dynamic Graph Neural Networks : Understand the principles and applications of dynamic graph neural networks, as well as their applications in time series data processing.7. Community and ResourcesParticipate in the community : Join the community of graph neural networks and deep learning, and participate
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