Estimation of Yu and Meyer bivariate stochastic volatility model by iterated filtering

Piotr Szczepocki
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Abstract

In financial applications, understanding the asset correlation structure is crucial to tasks such as asset pricing, portfolio optimisation, risk management, and asset allocation. Thus, modelling the volatilities and correlations of multivariate stock market returns is of great importance. This paper proposes the iterated filtering algorithm for estimating the bivariate stochastic volatility model of Yu and Meyer. The iterated filtering method is a frequentist-based approach that utilises particle filters and can be applied to estimating the parameters of non-linear or non-Gaussian state-space models. The paper presents an empirical example that demonstrates the way in which the proposed estimation method might be used to estimate the correlation between the returns of two assets: Standard and Poor’s 500 index and the price of gold in US dollars. This is accompanied by a simulation study that proves the validity of the approach.
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Yu和Meyer二元随机波动模型的迭代滤波估计
在金融应用中,理解资产关联结构对于资产定价、投资组合优化、风险管理和资产配置等任务至关重要。因此,建立多元股票市场收益的波动性和相关性模型是非常重要的。本文提出了估计Yu和Meyer二元随机波动模型的迭代滤波算法。迭代滤波方法是一种基于频率的方法,利用粒子滤波,可用于估计非线性或非高斯状态空间模型的参数。本文给出了一个实证例子,证明了所提出的估计方法可用于估计标准普尔500指数与美元黄金价格两种资产收益之间的相关性。并通过仿真研究验证了该方法的有效性。
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