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Heterogeneous market hypothesis approach for modeling unbiased extreme value volatility estimator in presence of leverage effect: An individual stock level study with economic significance analysis

机译:在杠杆效应存在下建模非偏见极值波动率估计的异质市场假设方法:具有经济意义分析的个体股票水平研究

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This paper explores the role of heterogeneity and leverage effect on the predictability of the AddRS volatility estimator (Kumar & Maheswaran, 2014a) using daily, weekly and monthly volatility components. Similar to the model setting of heterogeneous autoregressive (HAR) model (Corsi, 2009), we introduce the frameworks (HAR - AddRS and HAR - AddRS - L) to incorporate the impact of heterogeneity and leverage effect in modeling the AddRS volatility estimator. We find that the heterogeneity and leverage effect significantly impact the volatility prediction and when taken together produce a better in-sample fit. To evaluate the out-of-sample performance of our new volatility models, we compare the forecasting performance of our models with that of other traditional benchmark models forecasts using the error statistic approach and Hansen (2005) superior predictive ability (SPA) test. The results show that the HAR - AddRS and HAR - AddRS - L models provide more accurate volatility forecasts for the out-ofsample. We also undertake the economic significance analysis to highlight that a substantial economic gain is achieved when the volatility forecasts based on the HAR - AddRS - L model are used to implement various trading strategies, however, the same is not true when the volatility forecasts are based on the traditional returns-based conditional volatility models. (C) 2019 Board of Trustees of the University of Illinois. Published by Elsevier Inc. All rights reserved.
机译:本文探讨了异质性的作用,利用对ADDRS挥发性估计器(Kumar&Maheswaran,2014A)使用日常,每周和每月波动性组件的作用。类似于异构自相自我评级(HAR)型号的模型设置(CORESI,2009),我们介绍了框架(HAR - ADDRS和HAR-ADDRS - L),以解决异质性和杠杆效应在建模ADDRS挥发性估算器中的影响。我们发现异质性和杠杆效果显着影响波动性预测,并在一起产生更好的样品合适。为了评估我们新的波动率模型的样本性能,我们将模型的预测性能与其他传统基准模型预测的预测性能进行比较,使用错误统计方法和汉森(2005)卓越的预测能力(SPA)测试。结果表明,HAR-ADDRS和HAR - ADDRS - L模型为外自拍摄提供了更准确的波动性预测。我们还承担经济意义分析,强调,当基于HAR - ADDRS-L型号的波动预测用于实施各种交易策略时,实现了大量经济增益,但当波动率预测所基础时,同样是不正确的在传统的基于返回条件波动模型。 (c)2019年伊利诺伊大学的受托人委员会。由elsevier Inc.出版的所有权利保留。

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