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Low-Rank Riemannian Optimization Approach to the Role Extraction Problem

机译:角色提取问题的低秩黎曼优化方法

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摘要

This dissertation uses Riemannian optimization theory to increase our understanding of the role extraction problem and algorithms. Recent ideas of using the low-rank projection of the neighborhood pattern similarity measure and our theoretical analysis of the relationship between the rank of the similarity measure and the number of roles in the graph motivates our proposal to use Riemannian optimization to compute a low-rank approximation of the similarity measure.;We propose two indirect approaches to use to solve the role extraction problem. The first uses the standard two-phase process. For the first phase, we propose using Riemannian optimization to compute a low-rank approximation of the similarity of the graph, and for the second phase using k-means clustering on the low-rank factor of the similarity matrix to extract the role partition of the graph. This approach is designed to be efficient in time and space complexity while still being able to extract good quality role partitions. We use basic experiments and applications to illustrate the time, robustness, and quality of our two-phase indirect role extraction approach.;The second indirect approach we propose combines the two phases of our first approach into a one-phase approach that iteratively approximates the low-rank similarity matrix, extracts the role partition of the graph, and updates the rank of the similarity matrix. We show that the use of Riemannian rank-adaptive techniques when computing the low-rank similarity matrix improves robustness of the clustering algorithm.
机译:本文利用黎曼优化理论来加深对角色提取问题和算法的理解。使用邻域模式相似性度量的低秩投影的最新思想以及对相似性度量的秩与图中角色数量之间的关系的理论分析促使我们提出使用黎曼优化来计算低秩的建议我们提出了两种间接的方法来解决角色提取问题。第一种使用标准的两阶段过程。对于第一阶段,我们建议使用黎曼优化来计算图的相似度的低秩近似,对于第二阶段,我们建议对相似度矩阵的低秩因子使用k-均值聚类来提取图的相似度。图。该方法旨在在时间和空间复杂度上高效,同时仍然能够提取高质量的角色分区。我们使用基础实验和应用程序来说明我们的两阶段间接角色提取方法的时间,鲁棒性和质量。;我们建议的第二种间接方法将我们的第一种方法的两个阶段组合为一个迭代近似于低秩相似度矩阵,提取图的角色分区,并更新相似度矩阵的秩。我们表明,在计算低秩相似矩阵时,使用黎曼秩自适应技术可提高聚类算法的鲁棒性。

著录项

  • 作者

    Marchand, Melissa Sue.;

  • 作者单位

    The Florida State University.;

  • 授予单位 The Florida State University.;
  • 学科 Applied mathematics.;Mathematics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 176 p.
  • 总页数 176
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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