一致财务评估和风险度量的数据驱动框架

Zhenyu Cui, J. Kirkby, D. Nguyen
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引用次数: 17

摘要

在本文中,我们提出了一个统一金融衍生品估值和风险度量的通用数据驱动框架,该框架在衍生品交易清淡的市场中特别有用。我们首先从潜在资产价格的市场可观察时间序列中提取经验特征函数,然后利用傅立叶技术获得对数回报过程的物理非参数密度和累积分布函数,并以此为基础计算风险度量。然后,我们对非参数密度和分布函数进行风险中和,对各种金融衍生品进行模型独立估值,包括路径独立的欧式期权和路径依赖的奇异合约。通过显式估计状态-价格密度,并利用方便的基表示,我们能够在一致的无模型框架内大大简化奇异期权的定价。数值示例和使用真实市场数据(布伦特原油价格)的经验示例说明了所提出的方法在处理仅基于可观察时间序列数据的多个金融合约的定价和风险管理方面的准确性和通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven Framework for Consistent Financial Valuation and Risk Measurement
Abstract In this paper, we propose a general data-driven framework that unifies the valuation and risk measurement of financial derivatives, which is especially useful in markets with thinly-traded derivatives. We first extract the empirical characteristic function from market-observable time series for the underlying asset prices, and then utilize Fourier techniques to obtain the physical nonparametric density and cumulative distribution function for the log-returns process, based on which we compute risk measures. Then we risk-neutralize the nonparametric density and distribution functions to model-independently valuate a variety of financial derivatives, including path-independent European options and path-dependent exotic contracts. By estimating the state-price density explicitly, and utilizing a convenient basis representation, we are able to greatly simplify the pricing of exotic options all within a consistent model-free framework. Numerical examples, and an empirical example using real market data (Brent crude oil prices) illustrate the accuracy and versatility of the proposed method in handling pricing and risk management of multiple financial contracts based solely on observable time series data.
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