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Assessing Tail Risk Using Expectile Regressions with Partially Varying Coefficients 被引量:3

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摘要 To characterize heteroskedasticity,nonlinearity,and asymmetry in tail risk,this study investigates a class of conditional (dynamic) expectile models with partially varying coefficients in which some coefficients are allowed to be constants,but others are allowed to be unknown functions of random variables.A three-stage estimation procedure is proposed to estimate both the parametric constant coefficients and nonparametric functional coefficients.Their asymptotic properties are investigated under a time series context,together with a new simple and easily implemented test for testing the goodness of fit of models and a bandwidth selector based on newly defined cross-validatory estimation for the expected forecasting expectile errors.The proposed methodology is data-analytic and of sufficient flexibility to analyze complex and multivariate nonlinear structures without suffering from the curse of dimensionality.Finally,the proposed model is illustrated by simulated data,and applied to analyzing the daily data of the S&P500 return series.
出处 《Journal of Management Science and Engineering》 2018年第4期183-213,共31页 管理科学学报(英文版)
基金 The authors thank the Guest Editors and the anonymous referees for their helpful and constructive comments.The authors also acknowledge gratefully the partial financial support from the National Science Fund for Distinguished Young Scholars#71625001 the Natural Science Foundation of China grants#7 the scholarship from China Scholarship Council under the Grant CSC N201706310023.
作者简介 corresponding author:Ying Fang,fstl@xmu.edu.cn or yifstl@gmail.com;Zongwu Cai,ciz@ku.edu;Dingshi Tian,tiandingshi@gmail.com
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