Using CAViaR Models with Implied Volatility for Value-at-Risk Estimation
✍ Scribed by Jooyoung Jeon; James W. Taylor
- Publisher
- John Wiley and Sons
- Year
- 2011
- Tongue
- English
- Weight
- 315 KB
- Volume
- 32
- Category
- Article
- ISSN
- 0277-6693
- DOI
- 10.1002/for.1251
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✦ Synopsis
ABSTRACT
This paper proposes value‐at risk (VaR) estimation methods that are a synthesis of conditional autoregressive value at risk (CAViaR) time series models and implied volatility. The appeal of this proposal is that it merges information from the historical time series and the different information supplied by the market's expectation of risk. Forecast‐combining methods, with weights estimated using quantile regression, are considered. We also investigate plugging implied volatility into the CAViaR models—a procedure that has not been considered in the VaR area so far. Results for daily index returns indicate that the newly proposed methods are comparable or superior to individual methods, such as the standard CAViaR models and quantiles constructed from implied volatility and the empirical distribution of standardised residuals. We find that the implied volatility has more explanatory power as the focus moves further out into the left tail of the conditional distribution of S&P 500 daily returns. Copyright © 2012 John Wiley & Sons, Ltd.
📜 SIMILAR VOLUMES
## Abstract Modelling of non‐stationary time series using regression methodology is challenging. The wavelet transforms can be used to model non‐stationary time series having volatility clustering. The traditional risk measure is variance and now a days Value at Risk (VaR) is widely used in finance