马尔可夫模型下降风险分析与评估的一般方法

Gongqiu Zhang, Lingfei Li
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引用次数: 4

摘要

撤资风险是金融市场的一大担忧。提出了一种求解一般一维时间齐次马尔可夫过程缩进过程第一通道问题的新算法。基于连续时间马尔可夫链(CTMC)近似计算其拉普拉斯变换,并对拉普拉斯变换进行数值反演,得到其首次通过概率和最大衰减分布。我们证明了该算法对一般马尔可夫模型的收敛性,并对一类跳跃扩散模型给出了收敛率的估计。我们将该算法应用于计算Calmar比率进行投资分析,为最大回撤衍生品定价,并以高度波动的资产为基础对冲出售此类衍生品的风险。各种数值实验证明了该方法的计算效率。我们还开发了扩展来解决具有时间依赖性或随机波动或状态切换的模型中的缩减问题以及投资组合的缩减分析。
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A General Method for Analysis and Valuation of Drawdown Risk under Markov Models
Drawdown risk is a major concern in financial markets. We develop a novel algorithm to solve the first passage problem of the drawdown process of general one-dimensional time-homogeneous Markov processes. We compute its Laplace transform based on continuous time Markov chain (CTMC) approximation and numerically invert the Laplace transform to obtain the first passage probabilities and the distribution of the maximum drawdown. We prove convergence of our algorithm for general Markovian models and provide sharp estimate of the convergence rate for a general class of jump-diffusion models. We apply the algorithm to calculate the Calmar ratio for investment analysis, price maximum drawdown derivatives and hedge the risk of selling such derivatives with a highly volatile asset as the underlying. Various numerical experiments document the computational efficiency of our method. We also develop extensions to solve the drawdown problem in models with time dependence or stochastic volatility or regime switching and for portfolio drawdown analysis.
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