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Bayesian inference of the multi-period optimal portfolio for an exponential utility

机译:贝叶斯推动的多时期最佳投资组合用于指数效用

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摘要

We consider the estimation of the multi-period optimal portfolio obtained by maximizing an exponential utility. Employing the Jeffreys non-informative prior and the conjugate informative prior, we derive stochastic representations for the optimal portfolio weights at each time point of portfolio reallocation. This provides a direct access not only to the posterior distribution of the portfolio weights but also to their point estimates together with uncertainties and their asymptotic distributions. Furthermore, we present the posterior predictive distribution for the investor's wealth at each time point of the investment period in terms of a stochastic representation for the future wealth realization. This in turn makes it possible to use quantile-based risk measures or to calculate the probability of default, i.e the probability of the investor wealth to become negative. We apply the suggested Bayesian approach to assess the uncertainty in the multi-period optimal portfolio by considering assets from the FTSE 100 in the weeks after the British referendum to leave the European Union. The behaviour of the novel portfolio estimation method in a precarious market situation is illustrated by calculating the predictive wealth, the risk associated with the holding portfolio, and the probability of default in each period. (C) 2019 Elsevier Inc. All rights reserved.
机译:我们考虑通过最大化指数实用程序获得的多周期最佳产品组合的估计。聘请Jeffreys非信息性的先前和共轭信息,我们在每次投资组合重新分配的每个时间点都获得了最佳产品组合权重的随机表示。这提供了不仅可以直接访问产品重量的后部分布,而且还提供了它们与不确定性和渐近分布的点估计。此外,我们在投资期的每个时间点为未来财富实现的随机代表提供了投资期的财富后预测分配。这反过来可以使用基于量子的风险措施或计算违约的可能性,即投资者财富变为负的可能性。我们采用建议的贝叶斯方向通过在英国公投后几周内留下欧盟之后的FTSE 100的资产来评估多时期最佳投资组合中的不确定性。通过计算预测财富,通过计算预测财富,与控股组合相关的风险以及每个时期的违约概率来说明了新的投资组合估计方法的行为。 (c)2019 Elsevier Inc.保留所有权利。

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