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Weighted adaptive methods for multivariate response models with an HIV/neurocognitive application.

机译:具有HIV /神经认知功能的多元反应模型的加权自适应方法。

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摘要

Multivariate response models are being used increasingly more in almost all fields with the necessary employment of inferential methods such as Canonical Correlation Analysis (CCA). This requires the estimation of the number of uncorrelated canonical relationships between the two sets, or, equivalently so, determining the rank of the coefficient estimator in the multivariate response model. One way to do this is by the Rank Selection Criterion (RSC) by Bunea et al. with the assumption the error matrix has independent constant variance entries. While this assumption is necessary to show their strong theoretical results, in practical application, some flexibility is required. That is, such assumption cannot always be safely made.;What is developed here are the theoretics that parallel Bunea et al.'s work with the addition of a "decorrelator" weight matrix. One choice for the weight matrix is the residual covariance, but this introduces many issues in practice. A computationally more convenient weight matrix is the sample response covariance. When such a weight matrix is chosen, CCA is directly accessible by this weighted version of RSC giving rise to an Adaptive CCA (ACCA) with principal proofs for the large sample setting.;However, particular considerations are required for the high-dimensional setting, where similar theoretics do not hold. What is offered instead are extensive empirical simulations that reveal that using the sample response covariance still provides good rank recovery and estimation of the coefficient matrix, and hence, also provides good estimation of the number of canonical relationships and variates. It is argued precisely why other versions of the residual covariance, including a regularized version, are poor choices in the high-dimensional setting. Another approach to avoid these issues is to employ some type of variable selection methodology first before applying ACCA. Truly, any group selection method may be applied prior to ACCA as variable selection in the multivariate response model is the same as group selection in the univariate response model and thus completely eliminates these high-dimensional concerns.;To offer a practical application of these ideas, ACCA is applied to a "large sample'" neurocognitive dataset. Then, a high-dimensional dataset is generated to which Group LASSO will be first utilized before ACCA. This provides a unique perspective into the relationships between cognitive deficiencies in HIV-positive patients and the extensive, available neuroimaging measures.
机译:几乎在所有领域中,越来越多的人都使用多变量响应模型,并采用了诸如规范相关分析(CCA)之类的推理方法。这需要估计两组之间不相关的规范关系的数量,或者等效地确定多变量响应模型中系数估计器的等级。一种方法是通过Bunea等人的等级选择标准(RSC)。假设误差矩阵具有独立的常数方差条目。尽管此假设对于显示其强大的理论结果是必要的,但在实际应用中,需要一定的灵活性。就是说,这种假设不能总是被安全地做出。此处发展的是与Bunea等人的工作并行的理论,其中增加了“解相关器”权重矩阵。权重矩阵的一种选择是残差协方差,但这在实践中引入了许多问题。计算上更方便的权重矩阵是样本响应协方差。选择这种权重矩阵后,RSC的此加权版本可以直接访问CCA,从而产生具有大样本设置主要证据的自适应CCA(ACCA);但是,高尺寸设置需要特别考虑,类似的理论不成立的地方。而是提供了广泛的经验模拟,这些模拟揭示了使用样本响应协方差仍然可以提供良好的秩恢复和系数矩阵的估计,因此也可以很好地估计规范关系和变量的数量。确切地说,为什么剩余协方差的其他版本(包括正则化版本)在高维环境中是较差的选择。避免这些问题的另一种方法是在应用ACCA之前先采用某种类型的变量选择方法。确实,任何组选择方法都可以在ACCA之前应用,因为多变量响应模型中的变量选择与单变量响应模型中的组选择相同,因此完全消除了这些高维度的问题。 ,ACCA被应用于“大样本”神经认知数据集。然后,生成高维数据集,在ACCA之前将首先使用LASSO组。这为了解HIV阳性患者的认知缺陷与广泛可用的神经影像学检查之间的关系提供了独特的视角。

著录项

  • 作者

    Geis, Jennifer Ann.;

  • 作者单位

    The Florida State University.;

  • 授予单位 The Florida State University.;
  • 学科 Biostatistics.;Statistics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 91 p.
  • 总页数 91
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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