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A multivariate HAR-RV model with heteroscedastic errors and its WLS estimation

机译:具有异源误差的多变量HAR-RV模型及其WLS估计

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摘要

This work considers a multivariate heterogeneous autoregressive-realized volatility (HAR-RV) model in the presence of heteroscedasticity and aims to analyze realized volatilities of multiple assets that possess non-standard features, such as non-Gaussianity, time varying volatility and long-memory dependence. For capturing the long-memory, a HAR-RV model is employed, while for a heavy-tailed distribution, a GARCH process is adopted on the noise term. To estimate coefficients of the HAR-RV-GARCH model, we suggest weighted least squares estimator (WLSE) based on an observed weighting scheme and prove its asymptotic normality. Simulation results show a good performance on the WLSE. The multivariate HAR-RV-GARCH model fitted by the WLSE is illustrated with an application to realized volatilities of multiple financial data. (C) 2021 Elsevier B.V. All rights reserved.
机译:本作品在异源性存在下,在存在异源性,并旨在分析具有非标准特征的多种资产的实现型挥发性,例如非高斯,时间变化波动和长记忆 依赖。 为了捕获长存储器,采用HAR-RV模型,而对于重型分布,噪音术语采用GARCH工艺。 为了估计HAR-RV-GARCH模型的系数,我们基于观察到的加权方案提出加权最小二乘估计器(WLSE)并证明其渐近正常性。 仿真结果在WLSE上表现出良好的性能。 由WLSE拟合的多变量HAR-RV-GARCH模型用应用程序实现了多个财务数据的易变性。 (c)2021 Elsevier B.V.保留所有权利。

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