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Likelihood ratio-type tests in weighted composite quantile regression of DTARCH models 被引量:3

Likelihood ratio-type tests in weighted composite quantile regression of DTARCH models
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摘要 The double-threshold autoregressive conditional heteroscedastic(DTARCH) model is a useful tool to measure and forecast the mean and volatility of an asset return in a financial time series. The DTARCH model can handle situations wherein the conditional mean and conditional variance specifications are piecewise linear based on previous information. In practical applications, it is important to check whether the model has a double threshold for the conditional mean and conditional heteroscedastic variance. In this study, we develop a likelihood ratio test based on the estimated residual error for the hypothesis testing of DTARCH models. We first investigate DTARCH models with restrictions on parameters and propose the unrestricted and restricted weighted composite quantile regression(WCQR) estimation for the model parameters. These estimators can be used to construct the likelihood ratio-type test statistic. We establish the asymptotic results of the WCQR estimators and asymptotic distribution of the proposed test statistics. The finite sample performance of the proposed WCQR estimation and the test statistic is shown to be acceptable and promising using simulation studies. We use two real datasets derived from the Shanghai and Shenzhen Composite Indexes to illustrate the methodology. The double-threshold autoregressive conditional heteroscedastic(DTARCH) model is a useful tool to measure and forecast the mean and volatility of an asset return in a financial time series. The DTARCH model can handle situations wherein the conditional mean and conditional variance specifications are piecewise linear based on previous information. In practical applications, it is important to check whether the model has a double threshold for the conditional mean and conditional heteroscedastic variance. In this study, we develop a likelihood ratio test based on the estimated residual error for the hypothesis testing of DTARCH models. We first investigate DTARCH models with restrictions on parameters and propose the unrestricted and restricted weighted composite quantile regression(WCQR) estimation for the model parameters. These estimators can be used to construct the likelihood ratio-type test statistic. We establish the asymptotic results of the WCQR estimators and asymptotic distribution of the proposed test statistics. The finite sample performance of the proposed WCQR estimation and the test statistic is shown to be acceptable and promising using simulation studies. We use two real datasets derived from the Shanghai and Shenzhen Composite Indexes to illustrate the methodology.
出处 《Science China Mathematics》 SCIE CSCD 2019年第12期2571-2590,共20页 中国科学:数学(英文版)
基金 supported by National Natural Science Foundation of China(Grant No.71601123) MOE(Ministry of Education in China)Project of Humanities and Social Sciences(Grant No.15YJC910004) supported by National Natural Science Foundation of China(Grant No.11471277) the Research Grant Council of the Hong Kong Special Administration Region(Grant No.GRF14305014) supported by the State Key Program of National Natural Science Foundation of China(Grant No.71331006) the Major Research Plan of National Natural Science Foundation of China(Grant No.91546202)
关键词 DTARCH model QUANTILE weigh ted COMPOSITE QUANTILE regression modified LIKELIHOOD ratio test restricted WCQR ESTIMATORS unrestricted WCQR ESTIMATORS DTARCH model quantile weighted composite quantile regression modified likelihood ratio test restricted WCQR estimators unrestricted WCQR estimators
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