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Some interactions of modern optimization and statistics.

机译:现代优化和统计的一些相互作用。

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摘要

This dissertation attacks several challenging problems using state-of-the-art modern optimization and statistics. We first consider optimal, two stage, adaptive enrichment designs for randomized trials, using sparse linear programming. Adaptive enrichment designs involve preplanned rules for modifying enrollment criteria based on accruing data in a randomized trial. Such designs have been proposed. The goal is to learn which populations benefit from an experimental treatment. Two critical components of adaptive enrichment designs are the decision rule for modifying enrollment, and the multiple testing procedure. We provide the first general framework for simultaneously optimizing both of these components for two stage, adaptive enrichment designs. We minimize expected sample size under constraints on power and the familywise Type I error rate.;Next, we consider high-dimensional spatial graphical model estimation under a total cardinality constraint. Though this problem is highly nonconvex, we show that its primal-dual gap diminishes linearly with the dimensionality and provide a convex geometry justification of this `blessing of massive scale' phenomenon. Motivated by this result, we propose an efficient algorithm to solve the dual problem and prove that the solution achieves optimal statistical properties.;Finally, we consider the problem of hypothesis testing and confidence intervals under high dimensional proportional hazards models. Motivated by a geometric projection principle, we propose a unified likelihood ratio inferential framework, including score, Wald and partial likelihood ratio statistics for hypothesis testing. Without assuming model selection consistency, we derive the asymptotic distributions of these test statistics, establish their semiparametric optimality, and conduct power analysis under Pitman alternatives. We also develop procedures to construct pointwise confidence intervals for the baseline hazard function and conditional hazard function.
机译:本文利用最先进的现代优化和统计方法,攻克了一些具有挑战性的问题。我们首先考虑使用稀疏线性规划的最优,两阶段,自适应富集设计进行随机试验。适应性浓缩设计涉及预先计划的规则,用于基于随机试验中的累积数据修改入学标准。已经提出了这样的设计。目的是了解哪些人群将从实验治疗中受益。自适应浓缩设计的两个关键组成部分是修改注册的决策规则和多重测试程序。我们提供了第一个通用框架,用于同时优化两个阶段的自适应浓缩设计中的两个组件。我们在功率和家庭式I型错误率的约束下将期望的样本大小最小化。接下来,我们考虑在总基数约束下的高维空间图形模型估计。尽管这个问题是高度非凸的,但我们表明其原始-对偶间隙随尺寸线性减小,并为这种“大规模的祝福”现象提供了凸的几何学依据。受此结果的启发,我们提出了一种有效的算法来解决对偶问题,并证明该解决方案具有最佳的统计特性。最后,我们考虑了在高维比例风险模型下的假设检验和置信区间问题。基于几何投影原理,我们提出了一个统一的似然比推论框架,包括得分,沃尔德和偏似然比统计量,用于假设检验。在不假设模型选择一致性的情况下,我们得出这些测试统计量的渐近分布,建立它们的半参数最优性,并在Pitman替代方案下进行功效分析。我们还开发了一些程序来构造基准危害函数和条件危害函数的逐点置信区间。

著录项

  • 作者

    Fang, Xingyuan.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Statistics.;Operations research.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 181 p.
  • 总页数 181
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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