Machine Learning on Graphs: A Model and Comprehensive Taxonomy
May 07, 2020 ยท Declared Dead ยท ๐ Journal of machine learning research
"No code URL or promise found in abstract"
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Authors
Ines Chami, Sami Abu-El-Haija, Bryan Perozzi, Christopher Rรฉ, Kevin Murphy
arXiv ID
2005.03675
Category
cs.LG: Machine Learning
Cross-listed
cs.NE,
cs.SI,
stat.ML
Citations
337
Venue
Journal of machine learning research
Last Checked
3 months ago
Abstract
There has been a surge of recent interest in learning representations for graph-structured data. Graph representation learning methods have generally fallen into three main categories, based on the availability of labeled data. The first, network embedding (such as shallow graph embedding or graph auto-encoders), focuses on learning unsupervised representations of relational structure. The second, graph regularized neural networks, leverages graphs to augment neural network losses with a regularization objective for semi-supervised learning. The third, graph neural networks, aims to learn differentiable functions over discrete topologies with arbitrary structure. However, despite the popularity of these areas there has been surprisingly little work on unifying the three paradigms. Here, we aim to bridge the gap between graph neural networks, network embedding and graph regularization models. We propose a comprehensive taxonomy of representation learning methods for graph-structured data, aiming to unify several disparate bodies of work. Specifically, we propose a Graph Encoder Decoder Model (GRAPHEDM), which generalizes popular algorithms for semi-supervised learning on graphs (e.g. GraphSage, Graph Convolutional Networks, Graph Attention Networks), and unsupervised learning of graph representations (e.g. DeepWalk, node2vec, etc) into a single consistent approach. To illustrate the generality of this approach, we fit over thirty existing methods into this framework. We believe that this unifying view both provides a solid foundation for understanding the intuition behind these methods, and enables future research in the area.
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