Deep Learning for Graphs

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Abstract

We introduce an overview of methods for learning in structured domains covering foundational works developed within the last twenty years to deal with a whole range of complex data representations, including hierarchical structures, graphs and networks, and giving special attention to recent deep learning models for graphs. While we provide a general introduction to the field, we explicitly focus on the neural network paradigm showing how, across the years, these models have been extended to the adaptive processing of incrementally more complex classes of structured data. The ultimate aim is to show how to cope with the fundamental issue of learning adaptive representations for samples with varying size and topology.

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Bacciu, D., & Micheli, A. (2020). Deep Learning for Graphs. In Studies in Computational Intelligence (Vol. 896, pp. 99–127). Springer. https://doi.org/10.1007/978-3-030-43883-8_5

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