Hyperbolic Graph Embeddings: a Survey and an Evaluation on Anomaly Detection
Abstract
This survey reviews hyperbolic graph embedding models, and evaluate them on anomaly detection, highlighting their advantages over Euclidean methods in capturing complex structures. Evaluating models like HGCAE, \(P\)-VAE, and HGCN demonstrates high performance, with \(P\)-VAE achieving an F1-score of 94\% on the Elliptic dataset and HGCAE scoring 80\% on Cora. In contrast, Euclidean methods like DOMINANT and GraphSage struggle with complex data. The study emphasizes the potential of hyperbolic spaces for improving anomaly detection, and provides an open-source library to foster further research in this field.
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