基于谱密度的可扩展图拓扑学习

Yongyu Wang, Zhiqiang Zhao, Zhuo Feng
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引用次数: 10

摘要

图学习在许多数据挖掘和机器学习任务中发挥着重要作用,如流形学习、数据表示和分析、降维、数据聚类和可视化等。在这项工作中,我们引入了一种高度可扩展的谱图密度化方法(GRASPEL),用于从数据中学习图拓扑。通过将精度矩阵限制为类图拉普拉斯矩阵,我们的方法旨在从潜在的高维输入数据中学习稀疏无向图。GRASPEL学到的图的一个非常独特的性质是图上的谱嵌入(或近似有效电阻)距离将编码原始输入数据点之间的相似性。通过利用高性能谱方法,可以通过识别并将最关键的谱边包含到图中来学习稀疏但谱鲁棒的图。与之前最先进的图学习方法相比,GRASPEL具有更高的可扩展性,并且可以大幅提高各种数据挖掘和机器学习应用的计算效率和解决方案质量,例如流形学习,谱聚类(SC)和降维(DR)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Graph Topology Learning via Spectral Densification
Graph learning plays an important role in many data mining and machine learning tasks, such as manifold learning, data representation and analysis, dimensionality reduction, data clustering, and visualization, etc. In this work, we introduce a highly-scalable spectral graph densification approach (GRASPEL) for graph topology learning from data. By limiting the precision matrix to be a graph-Laplacian-like matrix, our approach aims to learn sparse undirected graphs from potentially high-dimensional input data. A very unique property of the graphs learned by GRASPEL is that the spectral embedding (or approximate effective-resistance) distances on the graph will encode the similarities between the original input data points. By leveraging high-performance spectral methods, sparse yet spectrally-robust graphs can be learned by identifying and including the most spectrally-critical edges into the graph. Compared with prior state-of-the-art graph learning approaches, GRASPEL is more scalable and allows substantially improving computing efficiency and solution quality of a variety of data mining and machine learning applications, such as manifold learning, spectral clustering (SC), and dimensionality reduction (DR).
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