连续时间动态均值- cvar组合优化

Jianjun Gao, Y. Xiong
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引用次数: 4

摘要

条件风险值(CVaR)定义为尾部分布的期望值超过风险值(VaR)。CVaR作为一种风险度量,近年来受到了学术界和金融界的广泛关注。然而,由于其可追溯性,大多数关于平均cvar投资组合优化的研究仅限于静态投资组合分析,其中仅对买入持有投资组合策略进行数值计算。本文研究了均值-CVaR组合模型的动态投资策略,该模型允许投资者动态调整投资策略,使投资组合的CVaR最小化,同时保持一定水平的预期收益。在认识到这类问题在连续时间模型中的病态性质后,我们通过将有限的资金水平作为财富的上界来修改模型。利用鞅方法,给出了该类问题的显式投资组合策略和均值- cvar有效边界。
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Dynamic mean-CVaR portfolio optimization in continuous-time
The conditional value-at-risk(CVaR) is defined as the expected value of the tail distribution exceeding Value-at-Risk(VaR). As a kind of risk measure, CVaR recently receives much attention from both academic field and financial industry. However, due to the tractability, most of the studies on mean-CVaR portfolio optimization are restricted to the static portfolio analysis, where only buy-and-hold portfolio policy is computed numerically. In this paper, we study the dynamic portfolio policy of the mean-CVaR portfolio model, in which the investor is allowed to adjust the investment policy dynamically to minimize the CVaR of the portfolio as well as keep certain level of the expected return. On recognizing the ill-posed nature of such a problem in continuous-time model, we modify the model by imposing the limited funding level as the upper bound of the wealth. By using the martingale approach, we develop the explicit portfolio policy and mean-CVaR efficient frontier for such a problem.
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