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Tail risk inference via expectiles in heavy-tailed time series
- Publication Year :
- 2023
-
Abstract
- Expectiles define the only law-invariant, coherent and elicitable risk measure apart from the expectation. The popularity of expectile-based risk measures is steadily growing and their properties have been studied for independent data, but further results are needed to establish that extreme expectiles can be applied with the kind of dependent time series models relevant to finance. In this article we provide a basis for inference on extreme expectiles and expectile-based marginal expected shortfall in a general β-mixing context that encompasses ARMA and GARCH models with heavy-tailed innovations. Our methods allow the estimation of marginal (pertaining to the stationary distribution) and dynamic (conditional on the past) extreme expectile-based risk measures. Simulations and applications to financial returns show that the new estimators and confidence intervals greatly improve on existing ones when the data are dependent.
- Subjects :
- Statistics and Probability
FOS: Computer and information sciences
Economics and Econometrics
MIXING
Mathematics - Statistics Theory
60G70, 62G20, 62G32
Statistics Theory (math.ST)
extreme quantile estimation
Methodology (stat.ME)
WEAK DEPENDENCE
TAIL COPULA
statistics
shortfall
ASYMMETRIC LEAST SQUARES ESTIMATION, MARGINAL EXPECTED SHORTFALL, MIXING, TAIL COPULA, WEAK DEPENDENCE
FOS: Mathematics
ASYMMETRIC LEAST SQUARES ESTIMATION
Statistics, Probability and Uncertainty
MARGINAL EXPECTED SHORTFALL
Statistics - Methodology
Social Sciences (miscellaneous)
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....bce3801f512ab4aed63b6dba7121efbd