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Sparse multivariate analyses via ell1-regularized optimization problems solved with Bregman iterative techniques.

机译:通过Bregman迭代技术解决的ell1-regularized优化问题进行的稀疏多元分析。

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摘要

In this dissertation we propose Split Bregman algorithms for several multivariate analytic techniques for dimensionality reduction and feature selection including Sparse Principal Components Analysis, Bisparse Singular Value Decomposition (BSSVD) and Bisparse Singular Value Decomposition with an ℓ1-constrained classifier . For each of these problems we construct and solve a new optimization problem using these Bregman iterative techniques. Each of the proposed optimization problems contain one or more ℓ 1-regularization terms to enforce sparsity in the solutions. The use of the ℓ1-norm to enforce sparsity is a widely used technique, however, its lack of differentiability makes it more difficult to solve problems including these types of terms. Bregman iterations make these solutions possible without the addition of variables and algorithms such as the Split Bregman algorithm makes additional penalty terms and multiple ℓ1 terms feasible, a trait that is not present in other state of the art algorithms such as the Fixed Point Continuation (FPC) algorithm. We also link sparse Principal Components to cluster centers, denoise Hyperspectral Images using the BSSVD, identify and remove ambiguous observations from a classification problem using the ℓ1-constrained classifier algorithm and detect anomalistic subgraphs using Sparse Eigenvectors of the Modularity Matrix.
机译:在本文中,我们针对具有降维和特征选择的几种多元分析技术提出了Split Bregman算法,包括稀疏主成分分析,双稀疏奇异值分解(BSSVD)和具有ℓ 1约束分类器的稀疏奇异值分解。对于这些问题,我们使用这些Bregman迭代技术构造并解决了一个新的优化问题。每个提出的优化问题都包含一个或多个ℓ 1-regularization术语,用于在解决方案中实施稀疏性。使用ℓ 1-范数来强制稀疏性是一种广泛使用的技术,但是,由于缺乏可微性,因此更难解决包括这些类型的术语在内的问题。 Bregman迭代使这些解决方案成为可能,而无需添加变量,而诸如Split Bregman算法之类的算法使附加惩罚项和多个ℓ 1项可行,这是其他现有技术算法(例如,定点连续)中不存在的特征(FPC)算法。我们还将稀疏的主成分链接到聚类中心,使用BSSVD对高光谱图像进行去噪,使用ℓ 1约束分类器算法从分类问题中识别并消除歧义的观测结果,并使用模块化矩阵的稀疏特征向量检测异常子图。

著录项

  • 作者

    Rohrbacker, Nicholas.;

  • 作者单位

    Colorado State University.;

  • 授予单位 Colorado State University.;
  • 学科 Applied Mathematics.;Statistics.;Mathematics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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