连接图的排序与稀疏

Q3 Mathematics Internet Mathematics Pub Date : 2012-06-22 DOI:10.1080/15427951.2013.800005
F. Graham, Wenbo Zhao, Mark Kempton
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引用次数: 23

摘要

在处理高维数据集时出现的许多问题涉及到连接图,其中每条边都与边权和d维线性变换相关联。我们考虑了PageRank的矢量化版本和有效阻力,它们可以用作组织和分析复杂数据集的基本工具。例如,在数据和图像处理中,可以利用广义PageRank和有效阻力来推导和修改矢量扩散图的扩散距离。此外,通过向量化PageRank确定连接图的边缘排序和有效阻力是简化和保持连接图全局结构的稀疏化算法的重要组成部分。此外,我们还研究了连接图中的一致性,特别是在恢复低维数据集和降低噪声的应用中。在这些应用中,我们分析了删除高秩边的效果。
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Ranking and Sparsifying a Connection Graph
Abstract Many problems arising in dealing with high-dimensional data sets involve connection graphs in which each edge is associated with both an edge weight and a d-dimensional linear transformation. We consider vectorized versions of PageRank and effective resistance that can be used as basic tools for organizing and analyzing complex data sets. For example, generalized PageRank and effective resistance can be utilized to derive and modify diffusion distances for vector diffusion maps in data and image processing. Furthermore, the edge-ranking of the connection graphs determined by vectorized PageRank and effective resistance are an essential part of sparsification algorithms that simplify and preserve the global structure of connection graphs. In addition, we examine consistencies in a connection graph, particularly in the applications of recovering low-dimensional data sets and the reduction of noise. In these applications, we analyze the effect of deleting edges with high edge rank.
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Internet Mathematics
Internet Mathematics Mathematics-Applied Mathematics
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