A multivariate FGD technique to improve VaR computation in equity markets
Journal
Computational Management Science
ISSN
1619-697X
ISSN-Digital
1619-6988
Type
journal article
Date Issued
2005-03-01
Author(s)
Barone Adesi, Giovanni
Abstract
It is difficult to compute Value-at-Risk (VaR) using multivariate models able to take into account the dependence structure between large numbers of assets and being still computationally feasible. A possible procedure is based on functional gradient descent (FGD) estimation for the volatility matrix in connection with asset historical simulation. Backtest analysis on simulated and real data provides strong empirical evidence of the better predictive ability of the proposed procedure over classical filtered historical simulation, with a resulting significant improvement in the measurement of risk.
Language
English
HSG Classification
not classified
Refereed
Yes
Publisher
Springer
Publisher place
Berlin
Volume
2
Number
2
Start page
87
End page
106
Pages
20
Subject(s)
Eprints ID
32651