Effectiveness of copula-extreme value theory in estimating value-at-risk: empirical evidence from Asian emerging markets

被引:20
|
作者
Chun-Pin Hsu
Chin-Wen Huang
Wan-Jiun Paul Chiou
机构
[1] York College,Department of Accounting and Finance
[2] The City University of New York,Finance Department
[3] Western Connecticut State University,Department of Finance and Supply Chain Management
[4] Shippensburg University of Pennsylvania,undefined
关键词
Copulas; Dependence; Emerging markets; EVT; GARCH; Backtesting; G15; F31; C46;
D O I
10.1007/s11156-011-0261-0
中图分类号
学科分类号
摘要
A traditional Monte Carlo simulation using linear correlations induces estimation bias in measuring portfolio value-at-risk (VaR), due to the well-documented existence of fat-tail, skewness, truncations, and non-linear relations in return distributions. In this paper, we consider the above issues in modeling VaR and evaluate the effectiveness of using copula-extreme-value-based semiparametric approaches. To assess portfolio risk in six Asian markets, we incorporate a combination of extreme value theory (EVT) and various copulas to build joint distributions of returns. A backtesting analysis using a Monte Carlo VaR simulation suggests that the Clayton copula-EVT evinces the best performance regardless of the shapes of the return distributions, and that in general the copulas with the EVT provide better estimations of VaRs than the copulas with conventionally employed empirical distributions. These findings still hold in conditional-coverage-based backtesting. These findings indicate the economic significance of incorporating the down-side shock in risk management.
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页码:447 / 468
页数:21
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