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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Robust Kalman filter based on a fuzzy GARCH model to forecast volatility using particle swarm optimization
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Robust Kalman filter based on a fuzzy GARCH model to forecast volatility using particle swarm optimization

机译:基于模糊GARCH模型的鲁棒卡尔曼滤波器,使用粒子群算法预测波动率

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摘要

Stock market volatility comprises complex characteristics of time-varying irregular behavior and asymmetric clustering properties with respect to both positive and negative stock index returns. In this paper, we present a fuzzy-GARCH model to analyze asymmetric clustering properties and a robust Kalman filter to address the problem of the time-varying irregular behavior of volatility. In our approach, we first use a fuzzy system to analyze clustering regimes based on stock market index returns. Second, we use the clustering regimes of the first stage to set up generalized autoregressive conditional heteroskedasticity (GARCH) models and reformulated state space. Finally, we use a robust Kalman filter to reduce time-varying complexity when forecasting volatility. The proposed method is based on state space and joins the parameters of membership functions and GARCH models that are highly complex and nonlinear. We present an iterative algorithm based on particle swarm optimization to estimate parameters of the membership functions and GARCH models. The effectiveness of the approach is demonstrated on stock market data from the Taiwan Stock Exchange-Weighted Index (Taiwan), Hang Seng Index (Hong Kong), and Japan Nikkei 225 Index (Japan). From the simulation results, we determine that forecasting of out-of-sample volatility performance is significantly improved when the GARCH model considers both asymmetric effect and robust adaptive forecasting.
机译:股票市场的波动性包括时变的不规则行为的复杂特征和正负股指收益的不对称聚类特性。在本文中,我们提出了一个模糊-GARCH模型来分析不对称的聚类特性,并提出了一个鲁棒的卡尔曼滤波器来解决波动性随时间变化的不规则行为的问题。在我们的方法中,我们首先使用模糊系统基于股票市场指数收益分析聚类机制。其次,我们使用第一阶段的聚类机制来建立广义自回归条件异方差(GARCH)模型和重新构造的状态空间。最后,当预测波动率时,我们使用鲁棒的卡尔曼滤波器来降低随时间变化的复杂性。所提出的方法基于状态空间,并加入了高度复杂和非线性的隶属函数和GARCH模型的参数。我们提出了一种基于粒子群优化的迭代算法,以估计隶属函数和GARCH模型的参数。台湾证券交易所加权指数(台湾),恒生指数(香港)和日本日经225指数(日本)的股市数据证明了该方法的有效性。根据仿真结果,我们确定当GARCH模型同时考虑非对称效应和鲁棒的自适应预测时,样本外波动率性能的预测将得到显着改善。

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