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Machine Learning on Graphs
Machine learning is inherently a problem-driven discipline, where we seek to build models that can learn from data in order to solve particular tasks. Machine learning on graphs is no different, except the usual categories of supervised and unsupervised are not necessarily the most informative or useful when it comes to graphs.
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Data Science
Related
Node Embeddings
Graph Representation Learning by William Hamilton
Neighborhood Overlap Detection
K-Clustering of Graph Nodes
Graph Data structure
Machine Learning on Graphs
Graph Statistics and Kernel Methods
Generalized neighborhood aggregation: Set aggregators
Graph Neural Networks (GNNs)
Probabilistic Graphical Models (PGM)
Adversarial Approaches: Generative adversarial networks (GANs)
Deep Generative Models
Recurrent Models for Graph Generation
Traditional Graph Generation
Key Area For Future Graph Model Development