邻接矩阵
嵌入
图嵌入
蝴蝶图
邻接表
编码器
图形属性
计算机科学
图形能量
组合数学
电压图
离散数学
数学
理论计算机科学
图形
算法
折线图
人工智能
操作系统
作者
Cencheng Shen,Qizhe Wang,Carey E. Priebe
标识
DOI:10.1109/tpami.2022.3225073
摘要
In this article we propose a lightning fast graph embedding method called one-hot graph encoder embedding. It has a linear computational complexity and the capacity to process billions of edges within minutes on standard PC — making it an ideal candidate for huge graph processing. It is applicable to either adjacency matrix or graph Laplacian, and can be viewed as a transformation of the spectral embedding. Under random graph models, the graph encoder embedding is approximately normally distributed per vertex, and asymptotically converges to its mean. We showcase three applications: vertex classification, vertex clustering, and graph bootstrap. In every case, the graph encoder embedding exhibits unrivalled computational advantages.
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