Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk

Extreme financial events usually lead to sharp jumps in stock prices and volatilities. In addition, jump clustering and stock price correlations contribute to the risk amplification acceleration mechanism during the crisis. In this paper, four Jump-GARCH models are used to forecast the jump diffusio...

Full description

Bibliographic Details
Main Authors: Zhouwei Wang, Qicheng Zhao, Min Zhu, Tao Pang
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/21/8849
id doaj-dcf6b5bc9320408cbef2e3d04195943e
record_format Article
spelling doaj-dcf6b5bc9320408cbef2e3d04195943e2020-11-25T03:56:35ZengMDPI AGSustainability2071-10502020-10-01128849884910.3390/su12218849Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability RiskZhouwei Wang0Qicheng Zhao1Min Zhu2Tao Pang3School of Finance and Business, Shanghai Normal University, Shanghai 200234, ChinaSchool of Finance and Business, Shanghai Normal University, Shanghai 200234, ChinaSchool of Finance and Business, Shanghai Normal University, Shanghai 200234, ChinaDepartment of Mathematics, North Carolina State University, Raleigh, NC 27695-8205, USAExtreme financial events usually lead to sharp jumps in stock prices and volatilities. In addition, jump clustering and stock price correlations contribute to the risk amplification acceleration mechanism during the crisis. In this paper, four Jump-GARCH models are used to forecast the jump diffusion volatility, which is used as the risk factor. The linear and asymmetric nonlinear effects are considered, and the value at risk of banks is estimated by support vector quantile regression. There are three main findings. First, in terms of the volatility process of bank stock price, the Jump Diffusion GARCH model is better than the Continuous Diffusion GARCH model, and the discrete jump volatility is significant. Secondly, due to the difference of the sensitivity of abnormal information shock, the jump behavior of bank stock price is heterogeneous. Moreover, CJ-GARCH models are suitable for most banks, while ARJI-R2-GARCH models are more suitable for small and medium sized banks. Thirdly, based on the jump diffusion volatility information, the performance of the support vector quantile regression is better than that of the parametric quantile regression and nonparametric quantile regression.https://www.mdpi.com/2071-1050/12/21/8849Jump-GARCH modeljump diffusion volatilitysupport vector quantile regressionvalue at risk
collection DOAJ
language English
format Article
sources DOAJ
author Zhouwei Wang
Qicheng Zhao
Min Zhu
Tao Pang
spellingShingle Zhouwei Wang
Qicheng Zhao
Min Zhu
Tao Pang
Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk
Sustainability
Jump-GARCH model
jump diffusion volatility
support vector quantile regression
value at risk
author_facet Zhouwei Wang
Qicheng Zhao
Min Zhu
Tao Pang
author_sort Zhouwei Wang
title Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk
title_short Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk
title_full Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk
title_fullStr Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk
title_full_unstemmed Jump Aggregation, Volatility Prediction, and Nonlinear Estimation of Banks’ Sustainability Risk
title_sort jump aggregation, volatility prediction, and nonlinear estimation of banks’ sustainability risk
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-10-01
description Extreme financial events usually lead to sharp jumps in stock prices and volatilities. In addition, jump clustering and stock price correlations contribute to the risk amplification acceleration mechanism during the crisis. In this paper, four Jump-GARCH models are used to forecast the jump diffusion volatility, which is used as the risk factor. The linear and asymmetric nonlinear effects are considered, and the value at risk of banks is estimated by support vector quantile regression. There are three main findings. First, in terms of the volatility process of bank stock price, the Jump Diffusion GARCH model is better than the Continuous Diffusion GARCH model, and the discrete jump volatility is significant. Secondly, due to the difference of the sensitivity of abnormal information shock, the jump behavior of bank stock price is heterogeneous. Moreover, CJ-GARCH models are suitable for most banks, while ARJI-R2-GARCH models are more suitable for small and medium sized banks. Thirdly, based on the jump diffusion volatility information, the performance of the support vector quantile regression is better than that of the parametric quantile regression and nonparametric quantile regression.
topic Jump-GARCH model
jump diffusion volatility
support vector quantile regression
value at risk
url https://www.mdpi.com/2071-1050/12/21/8849
work_keys_str_mv AT zhouweiwang jumpaggregationvolatilitypredictionandnonlinearestimationofbankssustainabilityrisk
AT qichengzhao jumpaggregationvolatilitypredictionandnonlinearestimationofbankssustainabilityrisk
AT minzhu jumpaggregationvolatilitypredictionandnonlinearestimationofbankssustainabilityrisk
AT taopang jumpaggregationvolatilitypredictionandnonlinearestimationofbankssustainabilityrisk
_version_ 1724464156075098112