Sampling distributions of optimal portfolio weights and characteristics in small and large dimensions

IF 0.9 4区 数学 Q4 PHYSICS, MATHEMATICAL Random Matrices-Theory and Applications Pub Date : 2019-08-12 DOI:10.1142/S2010326322500083
Taras Bodnar, H. Dette, Nestor Parolya, Erik Thorsén
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引用次数: 1

Abstract

Optimal portfolio selection problems are determined by the (unknown) parameters of the data generating process. If an investor wants to realize the position suggested by the optimal portfolios, he/she needs to estimate the unknown parameters and to account for the parameter uncertainty in the decision process. Most often, the parameters of interest are the population mean vector and the population covariance matrix of the asset return distribution. In this paper, we characterize the exact sampling distribution of the estimated optimal portfolio weights and their characteristics. This is done by deriving their sampling distribution by its stochastic representation. This approach possesses several advantages, e.g. (i) it determines the sampling distribution of the estimated optimal portfolio weights by expressions, which could be used to draw samples from this distribution efficiently; (ii) the application of the derived stochastic representation provides an easy way to obtain the asymptotic approximation of the sampling distribution. The later property is used to show that the high-dimensional asymptotic distribution of optimal portfolio weights is a multivariate normal and to determine its parameters. Moreover, a consistent estimator of optimal portfolio weights and their characteristics is derived under the high-dimensional settings. Via an extensive simulation study, we investigate the finite-sample performance of the derived asymptotic approximation and study its robustness to the violation of the model assumptions used in the derivation of the theoretical results.
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最优投资组合的小、大维度权重和特征的抽样分布
最优投资组合选择问题是由数据生成过程的(未知)参数决定的。如果投资者想要实现最优投资组合建议的仓位,他/她需要估计未知参数,并考虑决策过程中参数的不确定性。通常,感兴趣的参数是资产收益分布的总体均值向量和总体协方差矩阵。本文刻画了估计最优投资组合权重的精确抽样分布及其特征。这是通过其随机表示推导其抽样分布来完成的。该方法具有以下优点:(1)通过表达式确定估计的最优投资组合权重的抽样分布,可以有效地从该分布中抽取样本;(ii)所导出的随机表示的应用提供了一种简单的方法来获得抽样分布的渐近逼近。利用后一性质证明了最优组合权重的高维渐近分布是多元正态分布,并确定了其参数。在此基础上,给出了高维条件下最优投资组合权重及其特征的一致性估计。通过广泛的模拟研究,我们研究了所推导的渐近逼近的有限样本性能,并研究了其对理论结果推导中使用的模型假设违反的鲁棒性。
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来源期刊
Random Matrices-Theory and Applications
Random Matrices-Theory and Applications Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.90
自引率
11.10%
发文量
29
期刊介绍: Random Matrix Theory (RMT) has a long and rich history and has, especially in recent years, shown to have important applications in many diverse areas of mathematics, science, and engineering. The scope of RMT and its applications include the areas of classical analysis, probability theory, statistical analysis of big data, as well as connections to graph theory, number theory, representation theory, and many areas of mathematical physics. Applications of Random Matrix Theory continue to present themselves and new applications are welcome in this journal. Some examples are orthogonal polynomial theory, free probability, integrable systems, growth models, wireless communications, signal processing, numerical computing, complex networks, economics, statistical mechanics, and quantum theory. Special issues devoted to single topic of current interest will also be considered and published in this journal.
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