Identifying Price Jumps from Daily Data with Bayesian vs. Non-Parametric Methods

Milan Fičura, J. Witzany
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Abstract

Non-parametric approach to financial time series jump estimation, using the L-Estimator, is compared with the parametric approach utilizing a Stochastic-Volatility-Jump-Diffusion (SVJD) model, estimated with MCMC and extended with Particle Filters to estimate the out-sample evolution of its latent state variables, such as the jump occurrences. The comparison is performed on simulated time series with different kinds of dynamics, including Poisson jumps, self-exciting Hawkes jumps with long-term clustering, as well as co-jumps. In addition to that, a comparison is performed on the real world daily time series of 4 major currency exchange rates. The results from the simulation study show that for the purposes of in-sample estimation does the MCMC based parametric approach significantly outperform the L-Estimator. In the case of the out-sample estimates, based on a combination of MCMC an Particle Filters, used to sequentially estimate the jump occurrences immediately at the times at which the jumps occur, does the parametric approach achieve a similar accuracy as the non-parametric one in the case of the simulations with Poisson jumps that are relatively large, and it outperforms the non-parametric approach in the case of Hawkes jumps when the jumps are large. On the other hand, the L-Estimator provides better results than the parametric approach in all of the cases when the simulated jumps are small (1% or less), regardless of the jump process dynamics. The application of the methods to foreign exchange rate time series further shows that the estimates of the parametric method may be biased in the case when large outlier jumps occur in the time series as well as when the stochastic volatility grows too high (as happened during the crisis). In both of these cases, the non-parametric L-Estimator based approach seems to provide more robust jump estimates, less influenced by the mentioned issues.
用贝叶斯和非参数方法从每日数据中识别价格跳跃
使用L-Estimator进行金融时间序列跳跃估计的非参数方法与使用随机-波动-跳跃-扩散(SVJD)模型的参数方法进行比较,该模型使用MCMC估计并使用粒子滤波器扩展以估计其潜在状态变量的样本外演化,例如跳跃发生。对具有泊松跳跃、具有长期聚类的自激Hawkes跳跃和联合跳跃等不同动力的模拟时间序列进行了比较。除此之外,还对现实世界中4种主要货币汇率的每日时间序列进行了比较。仿真研究结果表明,对于样本内估计而言,基于MCMC的参数方法明显优于L-Estimator。在样本外估计的情况下,基于MCMC和粒子滤波器的组合,用于在跳跃发生的时间立即顺序估计跳跃的发生,在泊松跳跃相对较大的模拟情况下,参数方法是否达到与非参数方法相似的精度,并且在跳跃较大的Hawkes跳跃情况下优于非参数方法。另一方面,当模拟的跳跃很小(1%或更小)时,无论跳跃过程动态如何,L-Estimator都比参数化方法提供了更好的结果。对外汇汇率时间序列的应用进一步表明,当时间序列中出现较大的异常值跳变以及随机波动过大(如危机期间发生的情况)时,参数方法的估计可能存在偏差。在这两种情况下,基于非参数L-Estimator的方法似乎提供了更健壮的跳跃估计,受上述问题的影响较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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