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Portfolio optimization and dynamic hedging with receding horizon control, stochastic programming, and Monte Carlo simulation.

机译:通过后退的水平控制,随机规划和蒙特卡洛模拟进行投资组合优化和动态套期保值。

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摘要

We develop a new methodology to attack the two classic finance problems of portfolio optimization and dynamic hedging in an environment with a multi-period horizon, transaction costs, and dynamic asset parameters. Both of these problems would ideally be solved with dynamic programming, a methodology that would deliver the optimal solution. However, even problems that are much smaller than those of realistic size are computationally infeasible when formulated as a dynamic program. Thus, we propose a methodology to approximate the optimal solution to these computationally infeasible dynamic programming problems. Our methodology is based upon the optimization techniques of receding horizon control and stochastic programming. Bringing these methodologies together allows us to combine the long horizon of dynamic programming with computational feasibility. This methodology breaks down the monolithic dynamic programming problem into a sequence of smaller problems solved over time which allows us to incorporate changes in the system dynamics and to overcome issues of computational complexity.; Our methodology has several key advantages. It can be applied to (1) a wide variety of asset dynamics, (2) more than just one or two assets (some competing methodologies are limited to one or two assets), (3) different performance objectives, (4) environments that include realistic factors such as transaction costs. Its final advantage is (5) its strong performance vs. competitors as we are able to show significantly superior results with our methodology.; When applied to the dynamic hedging problem of hedging a short position on a derivative, this methodology is applicable to vanilla options, where analytical approximations exist, and to multi-dimensional options where no analytical solutions exist. Through simulation, empirical analysis, and a theoretical justification, we show our methodology significantly reduces expected absolute hedging error and increases expected utility on vanilla options vs. the classic analytical solutions as well as on multi-dimensional options vs. heuristic methodologies. For portfolio optimization, we focus mainly on optimizing a portfolio of defaultable bonds following a doubly stochastic reduced form model. Through Monte Carlo simulation we demonstrate results showing our methodology can significantly outperform the bond portfolio methodology of holding a constant percentage of the portfolio in each bond.
机译:我们开发了一种新的方法,以解决在多期限,交易成本和动态资产参数的环境中投资组合优化和动态套期交易这两个经典的财务问题。理想情况下,这两个问题都可以通过动态编程来解决,动态编程可以提供最佳解决方案。但是,当制定为动态程序时,即使是远远小于实际大小的问题在计算上也是不可行的。因此,我们提出了一种方法,可以对这些在计算上不可行的动态规划问题进行最佳求解。我们的方法基于后退水平控制和随机编程的优化技术。将这些方法放在一起可以使我们将动态编程的长远前景与计算可行性结合起来。这种方法将整体式动态规划问题分解为一系列随着时间推移而解决的较小问题,这使我们能够将系统动力学的变化纳入其中并克服计算复杂性的问题。我们的方法具有几个关键优势。它可以应用于(1)各种各样的资产动态,(2)不止一种或两种资产(某些竞争方法仅限于一种或两种资产),(3)不同的性能目标,(4)包括现实因素,例如交易成本。它的最终优势是(5)与竞争对手相比,它具有出色的性能,因为我们能够用我们的方法论显示出明显优越的结果。当应用于对冲衍生工具上的空头头寸的动态对冲问题时,此方法适用于存在分析近似值的原始期权,以及不存在分析解决方案的多维期权。通过仿真,经验分析和理论证明,我们证明了我们的方法显着降低了预期的绝对对冲误差,并提高了传统期权与经典分析解决方案以及多维期权与启发式方法的预期效用。对于投资组合优化,我们主要关注遵循双重随机简化形式模型来优化可违约债券的投资组合。通过蒙特卡洛模拟,我们证明了结果,表明我们的方法论可以大大优于债券投资组合方法,即在每个债券中持有一定比例的投资组合。

著录项

  • 作者

    Meindl, Peter James.;

  • 作者单位

    Stanford University.;

  • 授予单位 Stanford University.;
  • 学科 Economics Finance.; Operations Research.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 104 p.
  • 总页数 104
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 财政、金融;运筹学;
  • 关键词

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