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Financial Portfolio Risk Management: Model Risk, Robustness and Rebalancing Error.

机译:金融投资组合风险管理:模型风险,稳健性和再平衡误差。

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摘要

Risk management has always been in key component of portfolio management. While more and more complicated models are proposed and implemented as research advances, they all inevitably rely on imperfect assumptions and estimates. This dissertation aims to investigate the gap between complicated theoretical modelling and practice. We mainly focus on two directions: model risk and reblancing error.;In the first part of the thesis, we develop a framework for quantifying the impact of model error and for measuring and minimizing risk in a way that is robust to model error. This robust approach starts from a baseline model and finds the worst-case error in risk measurement that would be incurred through a deviation from the baseline model, given a precise constraint on the plausibility of the deviation. Using relative entropy to constrain model distance leads to an explicit characterization of worst-case model errors; this characterization lends itself to Monte Carlo simulation, allowing straightforward calculation of bounds on model error with very little computational effort beyond that required to evaluate performance under the baseline nominal model. This approach goes well beyond the effect of errors in parameter estimates to consider errors in the underlying stochastic assumptions of the model and to characterize the greatest vulnerabilities to error in a model. We apply this approach to problems of portfolio risk measurement, credit risk, delta hedging, and counterparty risk measured through credit valuation adjustment.;In the second part, we apply this robust approach to a dynamic portfolio control problem. The sources of model error include the evolution of market factors and the influence of these factors on asset returns. We analyze both finite- and infinite-horizon problems in a model in which returns are driven by factors that evolve stochastically. The model incorporates transaction costs and leads to simple and tractable optimal robust controls for multiple assets. We illustrate the performance of the controls on historical data. Robustness does improve performance in out-of-sample tests in which the model is estimated on a rolling window of data and then applied over a subsequent time period. By acknowledging uncertainty in the estimated model, the robust rules lead to less aggressive trading and are less sensitive to sharp moves in underlying prices.;In the last part, we analyze the error between a discretely rebalanced portfolio and its continuously rebalanced counterpart in the presence of jumps or mean-reversion in the underlying asset dynamics. With discrete rebalancing, the portfolio's composition is restored to a set of fixed target weights at discrete intervals; with continuous rebalancing, the target weights are maintained at all times. We examine the difference between the two portfolios as the number of discrete rebalancing dates increases. We derive the limiting variance of the relative error between the two portfolios for both the mean-reverting and jump-diffusion cases. For both cases, we derive “volatility adjustments” to improve the approximation of the discretely rebalanced portfolio by the continuously rebalanced portfolio, based on on the limiting covariance between the relative rebalancing error and the level of the continuously rebalanced portfolio. These results are based on strong approximation results for jump-diffusion processes.
机译:风险管理一直是投资组合管理的关键组成部分。尽管随着研究的进展提出并实施了越来越复杂的模型,但它们都不可避免地依赖于不完善的假设和估计。本文旨在探讨复杂的理论模型与实践之间的差距。我们主要关注两个方向:模型风险和补余误差。在本文的第一部分,我们开发了一个框架,用于量化模型误差的影响以及以对模型误差具有鲁棒性的方式来测量和最小化风险。这种鲁棒的方法从基线模型开始,并在给定对偏离合理性的精确限制的情况下,发现由于偏离基线模型而导致的风险度量中最坏情况的错误。使用相对熵来约束模型距离会导致最坏情况模型误差的明确表征。这种表征使其适合于蒙特卡洛模拟,从而允许在模型误差范围内进行简单的计算,而所需的计算工作量却远远超过了在基线标称模型下评估性能所需的工作量。这种方法远远超出了参数估计中错误的影响,可以考虑模型潜在随机假设中的错误并确定模型中最大的错误易受攻击性。我们将这种方法应用于投资组合风险度量,信用风险,三角套期保值和通过信用评估调整来衡量交易对手风险的问题。在第二部分中,我们将这种鲁棒的方法应用于动态投资组合控制问题。模型误差的来源包括市场因素的演变以及这些因素对资产收益的影响。我们在模型中分析了有限水平和无限水平问题,在该模型中,回报是由随机变化的因素驱动的。该模型包含交易成本,并导致对多种资产进行简单且易于处理的最佳鲁棒控制。我们说明了历史数据控件的性能。稳健性确实提高了样本外测试的性能,在这种测试中,模型是在数据的滚动窗口上估算的,然后在随后的时间段内应用。通过确认估计模型中的不确定性,稳健的规则导致较不激进的交易,并且对基础价格的急剧变动较不敏感。最后一部分,我们分析了存在时存在离散平衡的投资组合与其持续重新平衡的投资组合之间的误差。基础资产动态变化或均值回归。通过离散的再平衡,投资组合的组成可以离散的间隔恢复到一组固定的目标权重。通过持续的重新平衡,目标权重始终保持不变。随着离散的重新平衡日期增加,我们研究了两个投资组合之间的差异。对于均值回归和跳跃扩散情况,我们得出了两个投资组合之间的相对误差的极限方差。对于这两种情况,我们都基于相对再平衡误差与连续重新平衡的投资组合的水平之间的有限协方差,得出了“波动率调整”以通过连续重新平衡的投资组合来改善离散重新平衡的投资组合的近似性。这些结果是基于跳跃扩散过程的强近似结果。

著录项

  • 作者

    Xu, Xingbo.;

  • 作者单位

    Columbia University.;

  • 授予单位 Columbia University.;
  • 学科 Applied Mathematics.;Economics Finance.;Operations Research.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 230 p.
  • 总页数 230
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:51

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