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Bayes risk A-optimal experimental design methods for ill-posed inverse problems.

机译:针对不适定逆问题的贝叶斯风险A最优实验设计方法。

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摘要

Optimal experimental design methods are well established and have been applied in a variety of different fields. Most of the classical methods in optimal experimental design however neglect the subject of ill-posedness. Ill-posedness is an issue that is prevalent when solving inverse problems. In order to solve most real-world inverse problems of interest, we must use methods known as regularization to help stabilize the final solution. The use of regularization introduces a bias into the obtained estimates that classical optimal experimental design techniques do not take into account. The primary goal of this thesis is to consider some advancements in optimal experimental design methods that can be applied to ill-posed inverse problems.;We present a general method known as Bayes risk A-optimal design that uses the prior moment conditions of the inverse problem. The Bayes risk A-optimal design has a natural connection to the Tikhonov regularization estimator. We demonstrate how this connection arises and how this method can be used in practice. We also address some of the important theoretical considerations behind the use of A-optimal, and more generally all linear-optimal, design criteria. One of the most important results in optimal design theory is the so-called equivalence theorem. We present an updated version, the generalized equivalence theorem, that can be used with Bayes risk A-optimal designs for ill-posed inverse problems. This updated form of the equivalence theorem is paramount as it justifies the use of techniques that address ill-posedness for all linear-optimal design criteria.;Optimal designs are typically found by using either a sequential search algorithm or a convex optimization routine. To address the actual computation of an A-optimal design for ill-posed inverse problems We discuss the strengths and weakness behind both general approaches and ultimately present a hybrid method that uses both techniques for determining a design. The result is a method that is able to use the strengths of both approaches, specifically a method that is highly customizable and can be used to find A-optimal designs with specific attributes that are desirable to the user.
机译:最佳的实验设计方法已得到很好的确立,并已应用于各种不同的领域。然而,最佳实验设计中的大多数经典方法都忽略了不适定的问题。不适姿势是解决逆问题时普遍存在的问题。为了解决大多数现实世界中感兴趣的逆问题,我们必须使用称为正则化的方法来帮助稳定最终解。正则化的使用在获得的估计中引入了偏差,而经典的最佳实验设计技术并未考虑这些估计。本文的主要目的是考虑可用于不适定逆问题的最佳实验设计方法的一些进步。;我们提出了一种通用方法,称为贝叶斯风险 A -最优设计,该方法使用反问题的先验矩条件。贝叶斯风险 A 最优设计与Tikhonov正则估计量具有自然联系。我们演示了如何建立这种联系以及如何在实践中使用此方法。我们还讨论了使用 A -最优(更一般而言是所有线性-最优)设计标准背后的一些重要的理论考虑。最佳设计理论中最重要的结果之一就是所谓的等价定理。我们提出了一个更新的版本,广义等价定理,它可以与贝叶斯风险 A -最优设计一起用于不适定的逆问题。等价定理的这种更新形式至关重要,因为它证明了使用解决所有线性最优设计准则的不适定性的技术是合理的;通常通过使用顺序搜索算法或凸优化例程来找到最佳设计。为解决不适定的逆问题的 A 最佳设计的实际计算,我们讨论了这两种通用方法背后的优点和缺点,并最终提出了使用这两种技术确定设计的混合方法。结果是一种能够利用两种方法的优势的方法,特别是一种高度可定制的方法,可用于查找具有用户期望的特定属性的 A 最佳设计。

著录项

  • 作者

    Lucero, Christian.;

  • 作者单位

    Colorado School of Mines.;

  • 授予单位 Colorado School of Mines.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 100 p.
  • 总页数 100
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:05

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