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Comparison and robustification of Bayes and Black-Litterman models

机译:贝叶斯模型和布莱克-莱特曼模型的比较和鲁棒性

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摘要

For determining an optimal portfolio allocation, parameters representing the underlying market-characterized by expected asset returns and the covariance matrix-are needed. Traditionally, these point estimates for the parameters are obtained from historical data samples, but as experts often have strong opinions about (some of) these values, approaches to combine sample information and experts' views are sought for. The focus of this paper is on the two most popular of these frameworks-the Black-Litterman model and the Bayes approach. We will prove that-from the point of traditional portfolio optimization-the Black-Litterman is just a special case of the Bayes approach. In contrast to this, we will show that the extensions of both models to the robust portfolio framework yield two rather different robustified optimization problems.
机译:为了确定最佳的投资组合分配,需要代表以预期资产收益和协方差矩阵为特征的基础市场的参数。传统上,这些参数的点估计值是从历史数据样本中获得的,但是由于专家通常对这些值(其中的某些值)持有强烈的意见,因此寻求结合样本信息和专家意见的方法。本文的重点是两个最流行的框架-Black-Litterman模型和贝叶斯方法。从传统的资产组合优化的角度来看,我们将证明Black-Litterman只是贝叶斯方法的特例。与此相反,我们将显示两种模型对稳健投资组合框架的扩展都会产生两个截然不同的稳健优化问题。

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