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LATENT NETWORK SUMMARIZATION

机译:潜在网络摘要

摘要

Embodiments of the present invention provide systems, methods, and computer storage media for latent summarization of a graph. Structural features can be captured from feature vectors associated with each node of the graph by applying base functions on the feature vectors and iteratively applying relational operators to successive feature matrices to derive deeper inductive relational functions that capture higher-order structural information in different subgraphs of increasing size (node separations). Heterogeneity can be summarized by performing capturing features in appropriate subgraphs (e.g., node-centric neighborhoods associated with each node type, edge direction, and/or edge type). Binning and/or dimensionality reduction can be applied to the resulting feature matrices. The resulting set of relational functions and multi-level feature matrices can form a latent summary that can be used to perform a variety of graph-based tasks, including node classification, node clustering, link prediction, entity resolution, anomaly and event detection, and inductive learning tasks.
机译:本发明的实施例提供了用于潜在图形的潜在概括的系统,方法和计算机存储介质。通过在特征向量上应用基站函数并迭代地将关系运算符应用于连续的特征矩阵来捕获结构特征,以推导出捕获越来越多的子图的更深的电感关系功能,以捕获更深的电感关系函数。大小(节点分离)。通过在适当的子图中执行捕获特征(例如,与每个节点类型,边缘方向和/或边缘类型相关联的节点为中心的邻域)来概述异质性。分馏和/或维度减小可以应用于所得的特征矩阵。由此产生的关系函数和多级别特征矩阵可以形成潜在的摘要,该潜在摘要可用于执行各种基于图形的任务,包括节点分类,节点聚类,链路预测,实体分辨率,异常和事件检测,以及归纳学习任务。

著录项

  • 公开/公告号US2021342345A1

    专利类型

  • 公开/公告日2021-11-04

    原文格式PDF

  • 申请/专利权人 ADOBE INC.;

    申请/专利号US202117373281

  • 申请日2021-07-12

  • 分类号G06F16/2458;G06F16/901;G06F16/26;G06F16/215;G06F16/28;

  • 国家 US

  • 入库时间 2022-08-24 22:04:51

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