Graph Representation Learning
in machine learning or an advanced undergraduate student. The discussions of graph-structured data and graph properties are relatively self-contained. However, the book does assume a background in machine learning and a familiarity with modern deep learning methods (e.g., convolutional and re-current neural networks).
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