Fractional Barndorff-Nielsen and Shephard model: applications in variance and volatility swaps, and hedging

IF 0.8 Q4 BUSINESS, FINANCE Annals of Finance Pub Date : 2021-07-13 DOI:10.1007/s10436-021-00394-4
Nicholas Salmon, Indranil SenGupta
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引用次数: 19

Abstract

In this paper, we introduce and analyze the fractional Barndorff-Nielsen and Shephard (BN-S) stochastic volatility model. The proposed model is based upon two desirable properties of the long-term variance process suggested by the empirical data: long-term memory and jumps. The proposed model incorporates the long-term memory and positive autocorrelation properties of fractional Brownian motion with \(H>1/2\), and the jump properties of the BN-S model. We find arbitrage-free prices for variance and volatility swaps for this new model. Because fractional Brownian motion is still a Gaussian process, we derive some new expressions for the distributions of integrals of continuous Gaussian processes as we work towards an analytic expression for the prices of these swaps. The model is analyzed in connection to the quadratic hedging problem and some related analytical results are developed. The amount of derivatives required to minimize a quadratic hedging error is obtained. Finally, we provide some numerical analysis based on the VIX data. Numerical results show the efficiency of the proposed model compared to the Heston model and the classical BN-S model.

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分数Barndorf-Nielsen和Shephard模型:在方差和波动率互换以及套期保值中的应用
本文介绍并分析了分数阶Barndorf-Nielsen和Shephard(BN-S)随机波动率模型。所提出的模型基于经验数据提出的长期方差过程的两个理想性质:长期记忆和跳跃。所提出的模型结合了分数布朗运动的长期记忆和正自相关性质(H>;1/2\),以及BN-S模型的跳跃性质。我们找到了这个新模型的方差和波动率掉期的无套利价格。由于分数布朗运动仍然是一个高斯过程,我们在研究这些交换价格的解析表达式时,导出了连续高斯过程积分分布的一些新表达式。结合二次套期保值问题对该模型进行了分析,并得到了一些相关的分析结果。获得了最小化二次套期保值误差所需的导数量。最后,我们基于波动率指数数据进行了一些数值分析。数值结果表明,与Heston模型和经典的BN-S模型相比,所提出的模型是有效的。
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来源期刊
Annals of Finance
Annals of Finance BUSINESS, FINANCE-
CiteScore
2.00
自引率
10.00%
发文量
15
期刊介绍: Annals of Finance provides an outlet for original research in all areas of finance and its applications to other disciplines having a clear and substantive link to the general theme of finance. In particular, innovative research papers of moderate length of the highest quality in all scientific areas that are motivated by the analysis of financial problems will be considered. Annals of Finance''s scope encompasses - but is not limited to - the following areas: accounting and finance, asset pricing, banking and finance, capital markets and finance, computational finance, corporate finance, derivatives, dynamical and chaotic systems in finance, economics and finance, empirical finance, experimental finance, finance and the theory of the firm, financial econometrics, financial institutions, mathematical finance, money and finance, portfolio analysis, regulation, stochastic analysis and finance, stock market analysis, systemic risk and financial stability. Annals of Finance also publishes special issues on any topic in finance and its applications of current interest. A small section, entitled finance notes, will be devoted solely to publishing short articles – up to ten pages in length, of substantial interest in finance. Officially cited as: Ann Finance
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