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A segmented generalized Markov regime-switching model with its application in financial time series data

机译:分段通用的马尔可夫标准切换模型,其在金融时序序列数据中的应用

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摘要

Movements of equity indices are very important information for an investment decision. Empirical studies illustrate that the movements switch among different regimes. The Markov regime-switching model has important applications to such analysis. However, parameters estimated under normality assumption might not be stable and the corresponding change-point detection algorithm might face some challenges when either the error distribution is heavy-tailed or observed data contain outliers. In this paper, we relax the normality assumption and propose a generalized Markov regime-switching (GMRS) model. We propose a GMRS model based change-point detection algorithm, which is tested on both simulation data and Hang Seng monthly index. Simulation studies show that this algorithm can improve the accuracy of identifying change-points when either the error distribution is heavy-tailed or observed data contain outliers. It is also evident that the identified change-points on Hang Seng monthly index data match the observed market behaviours.
机译:股权指数的动作是投资决策的非常重要的信息。实证研究说明了运动在不同的制度之间切换。马尔可夫政权交换模型对这种分析具有重要的应用。然而,在正常假设下估计的参数可能不稳定,并且当错误分布是重尾或观察到的数据包含异常值时,相应的变化点检测算法可能面临一些挑战。在本文中,我们放宽正常假设,并提出广泛的马尔可夫政权切换(GMRS)模型。我们提出了一种基于GMRS模型的变化点检测算法,它在模拟数据和恒生月度索引上进行了测试。仿真研究表明,当错误分布是重尾或观察数据包含异常值时,该算法可以提高识别变化点的准确性。还有明显的是,恒生月度指数数据上所确定的变化点与观察到的市场行为相匹配。

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