An asymptotic approach to centrally planned portfolio selection

Zongxia Liang, Yang Liu
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引用次数: 1

Abstract

We formulate a centrally planned portfolio selection problem with the investor and the manager having S-shaped utilities under a recently popular first-loss contract. We solve for the closed-form optimal portfolio, which shows that a first-loss contract can sometimes behave like an option contract. We propose an asymptotic approach to investigate the portfolio. This approach can be adopted to illustrate economic insights, including the fact that the portfolio under a convex contract becomes more conservative when the market state is better. Furthermore, we discover a means of Pareto improvement by simultaneously considering the investor’s utility and increasing the manager’s incentive rate. This is achieved by establishing the collection of Pareto points of a single contract, proving that it is a strictly decreasing and strictly concave frontier, and comparing the Pareto frontiers of different contracts. These results may be helpful for the illustration of risk choices and the design of Pareto-optimal contracts.
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中央计划投资组合选择的渐进方法
我们提出了一个集中计划的投资组合选择问题,在最近流行的首亏合约下,投资者和管理者都有 S 型效用。我们求解了闭式最优投资组合,结果表明首亏合约有时表现得像期权合约。我们提出了一种渐进方法来研究投资组合。这种方法可以用来说明经济学观点,包括当市场状态较好时,凸合约下的投资组合会变得更加保守。此外,通过同时考虑投资者的效用和提高经理的激励率,我们发现了一种帕累托改进方法。为此,我们建立了单一合约的帕累托点集合,证明它是一个严格递减和严格凹陷的前沿,并比较了不同合约的帕累托前沿。这些结果可能有助于说明风险选择和设计帕累托最优合同。
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