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Random Matrix Theory with Applications in Statistics and Finance.

机译:随机矩阵理论及其在统计和金融领域的应用。

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摘要

This thesis investigates a technique to estimate the risk of the mean-variance (MV) portfolio optimization problem. We call this technique the Scaling technique. It provides a better estimator of the risk of the MV optimal portfolio. We obtain this result for a general estimator of the covariance matrix of the returns which includes the correlated sampling case as well as the independent sampling case and the exponentially weighted moving average case. This gave rise to the paper, [CMcS].;Our result concerning the Scaling technique relies on the moments of the inverse of compound Wishart matrices. This is an open problem in the theory of random matrices. We actually tackle a much more general setup, where we consider any random matrix provided that its distribution has an appropriate invariance property (orthogonal or unitary) under an appropriate action (by conjugation, or by a left-right action). Our approach is based on Weingarten calculus. As an interesting byproduct of our study - and as a preliminary to the solution of our problem of computing the moments of the inverse of a compound Wishart random matrix, we obtain explicit moment formulas for the pseudo-inverse of Ginibre random matrices. These results are also given in the paper, [CMS].;Using the moments of the inverse of compound Wishart matrices, we obtain asymptotically unbiased estimators of the risk and the weights of the MV portfolio. Finally, we have some numerical results which are part of our future work.
机译:本文研究了一种估计均值方差(MV)投资组合优化问题风险的技术。我们将此技术称为 Scaling 技术。它为MV最佳投资组合的风险提供了更好的估计。我们为收益的协方差矩阵的一般估计器获得了此结果,该协方差矩阵包括相关采样情况以及独立采样情况和指数加权移动平均情况。这引起了论文,[CMcS]。我们关于缩放技术的结果依赖于复合Wishart矩阵逆的矩。这是随机矩阵理论中的一个开放问题。实际上,我们处理的是一个更通用的设置,其中考虑任何随机矩阵,只要它的分布在适当的操作(通过共轭或左右动作)下具有适当的不变性(正交或unit)。我们的方法基于Weingarten微积分。作为我们研究的一个有趣的副产品-作为解决我们计算复合Wishart随机矩阵的逆矩的问题的初步方法,我们获得了Ginibre随机矩阵的伪逆的显式矩公式。这些结果也在论文[CMS]中给出。使用复合Wishart矩阵的逆矩,我们获得MV组合的风险和权重的渐近无偏估计。最后,我们得到了一些数值结果,这些结果是我们未来工作的一部分。

著录项

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Applied Mathematics.;Economics Finance.;Statistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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