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Binomial Markov-Switching Multifractal model with Skewed t innovations and applications to Chinese SSEC Index

机译:具有偏创新的二项式马尔可夫切换多分形模型及其在中国SSEC指数中的应用

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This paper presents the Binomial Markov-switching Multifractal (BMSM) model of asset returns with Skewed t innovations (BMSM-Skewed t for short), which considers the fat tails, skewness and multifractality in asset returns simultaneously. The parameters of BMSM-Skewed t model can be estimated by Maximum Likelihood (ML) methods, and volatility forecasting can be accomplished via Bayesian updating. In order to evaluate the performance of BMSM-Skewed t model, BMSM model with Normal innovations (BMSM-N), BMSM model with Student-t innovations (BMSM-t) and GARCH(1,1) models (GARCH-N, GARCH-t and GARCH-Skewed t) are chosen for comparison. Through empirical studies on Shanghai Stock Exchange Composite Index (SSEC), we find that for sample estimation, BMSM models outperform the GARCH(1,1) models through BIC and AIC rules, and BMSM-Skewed t performs the best among all the models due to its fat tails, skewness and multifractality. In addition, BMSM-Skewed t model dominates other models at most forecasting horizons for out-of-sample volatility forecasts in terms of MSE, MAE and SPA test. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了基于偏t创新的资产收益率的二项式马尔可夫转换多重分形(BMSM)模型(简称BMSM-Skewed t),该模型同时考虑了资产收益中的粗尾,偏度和多重分形。 BMSM-skewed t模型的参数可以通过最大似然(ML)方法进行估计,而波动率预测可以通过贝叶斯更新来完成。为了评估BMSM-skewed t模型,具有常规创新的BMSM模型(BMSM-N),具有Student-t创新的BMSM模型(BMSM-t)和GARCH(1,1)模型(GARCH-N,GARCH选择-t和GARCH-s歪斜t)进行比较。通过对上海证券交易所综合指数(SSEC)的实证研究,我们发现,对于样本估计,BMSM模型通过BIC和AIC规则优于GARCH(1,1)模型,而BMSM-Skewed t在所有模型中表现最好到其肥大的尾巴,偏度和多重分形。此外,就MSE,MAE和SPA测试而言,BMSM-skewed t模型在大多数预测范围内均能在其他模型中主导样本外波动率预测。 (C)2016 Elsevier B.V.保留所有权利。

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