Variational Disentangled Graph Auto-Encoders for Link Prediction
Jun Fu, Xiaojuan Zhang, Shuang Li, Dali Chen

TL;DR
This paper introduces a novel disentangled auto-encoder framework for link prediction in graphs, improving interpretability and performance by capturing independent latent factors influencing links.
Contribution
It pioneers the application of disentanglement strategies to link prediction, proposing DGAE and VDGAE models that enhance interpretability and accuracy.
Findings
Achieves state-of-the-art results on real-world benchmarks.
Effectively captures distinct latent factors influencing links.
Demonstrates improved interpretability through qualitative analysis.
Abstract
With the explosion of graph-structured data, link prediction has emerged as an increasingly important task. Embedding methods for link prediction utilize neural networks to generate node embeddings, which are subsequently employed to predict links between nodes. However, the existing embedding methods typically take a holistic strategy to learn node embeddings and ignore the entanglement of latent factors. As a result, entangled embeddings fail to effectively capture the underlying information and are vulnerable to irrelevant information, leading to unconvincing and uninterpretable link prediction results. To address these challenges, this paper proposes a novel framework with two variants, the disentangled graph auto-encoder (DGAE) and the variational disentangled graph auto-encoder (VDGAE). Our work provides a pioneering effort to apply the disentanglement strategy to link prediction.…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Bioinformatics and Genomic Networks
Methodsfail
