Particle filters for inference of high-dimensional multivariate stochastic volatility models with cross-leverage effects

IF 1.7 Q2 MATHEMATICS, APPLIED Foundations of data science (Springfield, Mo.) Pub Date : 2019-02-25 DOI:10.3934/fods.2019003
Yaxian Xu, A. Jasra
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引用次数: 5

Abstract

Multivariate stochastic volatility models are a popular and well-known class of models in the analysis of financial time series because of their abilities to capture the important stylized facts of financial returns data. We consider the problems of filtering distribution estimation and also marginal likelihood calculation for multivariate stochastic volatility models with cross-leverage effects in the high dimensional case, that is when the number of financial time series that we analyze simultaneously (denoted by \begin{document}$ d $\end{document} ) is large. The standard particle filter has been widely used in the literature to solve these intractable inference problems. It has excellent performance in low to moderate dimensions, but collapses in the high dimensional case. In this article, two new and advanced particle filters proposed in [ 4 ], named the space-time particle filter and the marginal space-time particle filter, are explored for these estimation problems. The better performance in both the accuracy and stability for the two advanced particle filters are shown using simulation and empirical studies in comparison with the standard particle filter. In addition, Bayesian static model parameter estimation problem is considered with the advances in particle Markov chain Monte Carlo methods. The particle marginal Metropolis-Hastings algorithm is applied together with the likelihood estimates from the space-time particle filter to infer the static model parameter successfully when that using the likelihood estimates from the standard particle filter fails.
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具有交叉杠杆效应的高维多元随机波动模型的粒子滤波
多元随机波动率模型是金融时间序列分析中一类流行且知名的模型,因为它们能够捕捉金融回报数据的重要程式化事实。我们考虑了在高维情况下,具有交叉杠杆效应的多元随机波动率模型的滤波分布估计和边际似然计算问题,也就是说,当我们同时分析的金融时间序列的数量(用\ begin{document}$d$\ end{document}表示)很大时。标准粒子滤波器在文献中被广泛用于解决这些棘手的推理问题。它在低到中等维度上具有出色的性能,但在高维度的情况下会崩溃。本文针对这些估计问题,探讨了[4]中提出的两种新的高级粒子滤波器,即时空粒子滤波器和边缘时空粒子滤波器。通过模拟和实证研究,与标准粒子滤波器相比,两种先进粒子滤波器在精度和稳定性方面都表现出更好的性能。此外,结合粒子马尔可夫链蒙特卡罗方法的进展,考虑了贝叶斯静态模型参数估计问题。当使用来自标准粒子滤波器的似然估计失败时,粒子边际Metropolis-Hastings算法与来自时空粒子滤波器的概率估计一起应用,以成功地推断静态模型参数。
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