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A stochastic programming model using an endogenously determined worst case risk measure for dynamic asset allocation

机译:使用内生确定的最坏情况风险度量进行动态资产分配的随机规划模型

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We present a new approach to asset allocation with transaction costs. A multiperiod stochastic Linear programming model is developed where the risk is based on the worst case payoff that is endogenously determined by the model that balances expected return and risk. Utilizing portfolio protection and dynamic hedging, an investment portfolio similar to an option-like payoff structure on the initial investment portfolio is characterized. The relative changes in the expected terminal wealth, worst case payoff, and risk aversion, are studied theoretically and illustrated using a numerical example. This model dominates a static mean-variance model when the optimal portfolios are evaluated by the Sharpe ratio. [References: 26]
机译:我们提出了一种使用交易成本进行资产分配的新方法。开发了一种多周期随机线性规划模型,其中风险基于最坏情况的收益,该收益是由平衡预期收益和风险的模型内生确定的。利用投资组合保护和动态套期保值,可以对类似于初始投资组合上的期权收益结构的投资组合进行特征分析。理论上研究了预期最终财富,最坏情况下的回报和规避风险的相对变化,并通过一个数值示例进行了说明。当通过Sharpe比率评估最优投资组合时,该模型主导了静态均值-方差模型。 [参考:26]

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