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Bhagya Hettige Yuan-Fang Li Weiqing Wang Wray Buntine

Abstract
Graph embedding methods transform high-dimensional and complex graph contents into low-dimensional representations. They are useful for a wide range of graph analysis tasks including link prediction, node classification, recommendation and visualization. Most existing approaches represent graph nodes as point vectors in a low-dimensional embedding space, ignoring the uncertainty present in the real-world graphs. Furthermore, many real-world graphs are large-scale and rich in content (e.g. node attributes). In this work, we propose GLACE, a novel, scalable graph embedding method that preserves both graph structure and node attributes effectively and efficiently in an end-to-end manner. GLACE effectively models uncertainty through Gaussian embeddings, and supports inductive inference of new nodes based on their attributes. In our comprehensive experiments, we evaluate GLACE on real-world graphs, and the results demonstrate that GLACE significantly outperforms state-of-the-art embedding methods on multiple graph analysis tasks.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| link-prediction-on-acm | GLACE | AP: 98.24 AUC: 98.34 |
| link-prediction-on-citeseer-nonstandard | GLACE | AP: 98.37 AUC: 98.43 |
| link-prediction-on-cora-nonstandard-variant | GLACE | AP: 98.52 AUC: 98.6 |
| link-prediction-on-dblp | GLACE | AP: 98.4 AUC: 98.55 |
| link-prediction-on-pubmed-nonstandard-variant | GLACE | AP: 97.49 AUC: 97.82 |
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