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Convex Analysis for Minimizing and Learning Submodular Set Functions.

机译:用于最小化和学习亚模集函数的凸分析。

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摘要

The connections between convexity and submodularity are explored, for purposes of minimizing and learning submodular set functions.;First, we develop a novel method for minimizing a particular class of submodular functions, which can be expressed as a sum of concave functions composed with modular functions. The basic algorithm uses an accelerated first order method applied to a smoothed version of its convex extension. The smoothing algorithm is particularly novel as it allows us to treat general concave potentials without needing to construct a piecewise linear approximation as with graph-based techniques.;Second, we derive the general conditions under which it is possible to find a minimizer of a submodular function via a convex problem. This provides a framework for developing submodular minimization algorithms. The framework is then used to develop several algorithms that can be run in a distributed fashion. This is particularly useful for applications where the submodular objective function consists of a sum of many terms, each term dependent on a small part of a large data set.;Lastly, we approach the problem of learning set functions from an unorthodox perspective---sparse reconstruction. We demonstrate an explicit connection between the problem of learning set functions from random evaluations and that of sparse signals. Based on the observation that the Fourier transform for set functions satisfies exactly the conditions needed for sparse reconstruction algorithms to work, we examine some different function classes under which uniform reconstruction is possible.
机译:为了最小化和学习子模态集合函数,探讨了凸度和子模态性之间的联系。首先,我们开发了一种最小化特定类别的子模态函数的新方法,该方法可以表示为由模块化函数组成的凹函数之和。 。基本算法使用加速的一阶方法,将其应用于凸扩展的平滑版本。平滑算法特别新颖,因为它允许我们处理一般的凹势,而无需像基于图的技术那样构造分段线性逼近。其次,我们得出了可以找到子模的最小化子的一般条件。通过凸问题起作用。这提供了开发亚模块最小化算法的框架。然后,该框架用于开发几种可以以分布式方式运行的算法。这对于子模块目标函数由许多项的总和组成,每个项取决于大数据集的一小部分的应用特别有用;最后,我们从非正统的角度解决学习集合函数的问题-稀疏重建。我们证明了从随机评估中学习集合函数的问题与稀疏信号之间的明确联系。基于对集合函数进行傅立叶变换的结论恰好满足稀疏重建算法工作所需的条件,我们研究了一些不同的函数类别,在这些类别下可以进行统一重建。

著录项

  • 作者

    Stobbe, Peter.;

  • 作者单位

    California Institute of Technology.;

  • 授予单位 California Institute of Technology.;
  • 学科 Applied mathematics.;Computer science.;Operations research.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:40:55

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