Value‐at‐Risk (VaR) has become a mainstream risk management technique employed by a large proportion of financial institutions. There exists a substantial amount of research dealing with this task, most commonly referred to as VaR backtesting. A new generation of “self‐learning” VaR models (Conditional Autoregressive Value‐at‐Risk or CAViaR) combine backtesting results with ex ante VaR estimates in an ARIMA framework in order to forecast P/L distributions more accurately. In this commentary, the authors present a systematic overview of several classes of applied statistical techniques that can make VaR backtesting more comprehensive and provide valuable insights into the analytical properties of VaR models in various market environments. In addition, they discuss the challenges associated with extending traditional backtesting approaches for VaR horizons longer than one day and propose solutions to this important problem.
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1 February 2001
Review Article|
February 01 2001
Measuring Predictive Accuracy of Value‐at‐Risk Models: Issues, Paradigms, and Directions Available to Purchase
LEO M. TILMAN;
LEO M. TILMAN
Managing director at Bear, Stearns & Co. Inc. and contributing editor of The Journal of Risk Finance.
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PAVEL BRUSILOVSKIY
PAVEL BRUSILOVSKIY
Manager in the Marketing Analytics Group of IMS Health.
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Publisher: Emerald Publishing
Online ISSN: 2331-2947
Print ISSN: 1526-5943
© MCB UP Limited
2001
Journal of Risk Finance (2001) 2 (3): 83–91.
Citation
TILMAN LM, BRUSILOVSKIY P (2001), "Measuring Predictive Accuracy of Value‐at‐Risk Models: Issues, Paradigms, and Directions". Journal of Risk Finance , Vol. 2 No. 3 pp. 83–91, doi: https://doi.org/10.1108/eb043469
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