Authors
Shangyu Xie, Yong Zhou, Alan TK Wan
Publication date
2014/10/2
Journal
Journal of Business & Economic Statistics
Volume
32
Issue
4
Pages
576-592
Publisher
Taylor & Francis
Description
This article develops a nonparametric varying-coefficient approach for modeling the expectile-based value at risk (EVaR). EVaR has an advantage over the conventional quantile-based VaR (QVaR) of being more sensitive to the magnitude of extreme losses. EVaR can also be used for calculating QVaR and expected shortfall (ES) by exploiting the one-to-one mapping from expectiles to quantiles, and the relationship between VaR and ES. Previous studies on conditional EVaR estimation only considered parametric autoregressive model set-ups, which account for the stochastic dynamics of asset returns but ignore other exogenous economic and investment related factors. Our approach overcomes this drawback and allows expectiles to be modeled directly using covariates that may be exogenous or lagged dependent in a flexible way. Risk factors associated with profits and losses can then be identified via the …
Total citations
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Scholar articles
S Xie, Y Zhou, ATK Wan - Journal of Business & Economic Statistics, 2014