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Non-linear filtering and optimal investment under partial information for stochastic volatility models

机译:随机波动模型下部分信息下的非线性滤波和最优投资

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摘要

This paper studies the question of filtering and maximizing terminal wealth from expected utility in a partially information stochastic volatility models. The special features is that the only information available to the investor is the one generated by the asset prices, and the unobservable processes will be modeled by a stochastic differential equations. Using the change of measure techniques, the partial observation context can be transformed into a full information context such that coefficients depend only on past history of observed prices (filter processes). Adapting the stochastic non-linear filtering, we show that under some assumptions on the model coefficients, the estimation of the filters depend on a priorimodels for the trend and the stochastic volatility. Moreover, these filters satisfy a stochastic partial differential equations named "Kushner-Stratonovich equations". Using the martingale duality approach in this partially observed incomplete model, we can characterize the value function and the optimal portfolio. The main result here is that the dual value function associated to the martingale approach can be expressed, via the dynamic programming approach, in terms of the solution to a semilinear partial differential equation which depends also on the filters estimate and the volatility. We illustrate our results with some examples of stochastic volatility models popular in the financial literature.
机译:本文研究了在部分信息随机波动率模型中从期望效用中过滤和最大化终端财富的问题。其特点是,投资者可获得的唯一信息是资产价格所产生的信息,而无法观察到的过程将通过随机微分方程来建模。使用度量技术的变化,可以将部分观察上下文转换成完整的信息上下文,以便系数仅取决于观察价格的过去历史(过滤过程)。适应随机非线性滤波,我们表明在对模型系数的一些假设下,滤波器的估计取决于趋势和随机波动率的先验模型。而且,这些滤波器满足名为“ Kushner-Stratonovich方程”的随机偏微分方程。在此部分观测到的不完全模型中,使用the对偶方法可以表征价值函数和最优投资组合。此处的主要结果是,可以通过动态编程方法,根据半线性偏微分方程的解表示与the方法相关的对偶值函数,该半线性偏微分方程还取决于滤波器的估计和波动率。我们用一些在金融文献中流行的随机波动率模型的例子来说明我们的结果。

著录项

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类
  • 入库时间 2022-08-20 20:12:32

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