计算机科学
图嵌入
测地线
自编码
嵌入
图形
理论计算机科学
编码器
非线性降维
歧管(流体力学)
算法
深度学习
人工智能
模式识别(心理学)
数学
降维
机械工程
数学分析
工程类
操作系统
作者
Bozhen Hu,Zelin Zang,Jun Xia,Lirong Wu,Cheng Tan,Stan Z. Li
标识
DOI:10.1109/icassp49357.2023.10095904
摘要
Representing graph data in a low-dimensional space for subsequent tasks is the purpose of attributed graph embedding. Most existing neural network approaches learn latent representations by minimizing reconstruction errors. Rare work considers the data distribution and the topological structure of latent codes simultaneously, which often results in inferior embeddings in real-world graph data. This paper proposes a novel Deep Manifold (Variational) Graph Auto-Encoder (DMVGAE/DMGAE) method for attributed graph data to improve the stability and quality of learned representations to tackle the crowding problem. The node-to-node geodesic similarity is preserved between the original and latent space under a pre-defined distribution. The proposed method surpasses state-of-the-art baseline algorithms by a significant margin on different downstream tasks across popular datasets, which validates our solutions. We promise to release the code after acceptance.
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