Statistical Inference for a Relative Risk Measure |
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Authors: | Yi He Yanxi Hou Liang Peng Jiliang Sheng |
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Affiliation: | 1. Department of Econometrics and Business Statistics, Monash University, Caulfield East, Victoria 3145, Australia (yi.he2@monash.edu);2. School of Mathematics, Georgia Institute of Technology, Atlanta, GA 30332-0160 (yhou44@math.gatech.edu);3. Department of Risk Management and Insurance, Georgia State University, Atlanta, GA 30303 (lpeng@gsu.edu);4. School of Statistics, Jiangxi University of Finance and Economics, Nanchang, Jiangxi 330013, PR China (shengjiliang@163.com) |
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Abstract: | ABSTRACTFor monitoring systemic risk from regulators’ point of view, this article proposes a relative risk measure, which is sensitive to the market comovement. The asymptotic normality of a nonparametric estimator and its smoothed version is established when the observations are independent. To effectively construct an interval without complicated asymptotic variance estimation, a jackknife empirical likelihood inference procedure based on the smoothed nonparametric estimation is provided with a Wilks type of result in case of independent observations. When data follow from AR-GARCH models, the relative risk measure with respect to the errors becomes useful and so we propose a corresponding nonparametric estimator. A simulation study and real-life data analysis show that the proposed relative risk measure is useful in monitoring systemic risk. |
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Keywords: | Copula Expected shortfall Jackknife empirical likelihood Nonparametric estimation Systemic risk. |
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