Beyond Value at Risk: Forecasting Portfolio Loss at Multiple Horizons

34 Pages Posted: 22 Oct 2007

See all articles by Lisa R. Goldberg

Lisa R. Goldberg

University of California, Berkeley; Aperio Group

Guy Miller

BARRA, Inc. - Equity Research

Jared Weinstein

University of California, Los Angeles (UCLA)

Multiple version iconThere are 2 versions of this paper

Date Written: October 11, 2007

Abstract

We develop a portfolio risk model that uses high-frequency data to forecast the loss surface, which is the set of loss distributions at future time horizons. Our model uses a fully automated, semi-parametric fitting procedure that has its basis in extreme value statistics. We take account of distributional asymmetry, heavy tails, heteroscedasticity and serial correlation. Loss distributions are time aggregated by taking products of characteristic functions. We test loss-surface-implied forecasts of value at risk and expected shortfall out of sample on a diverse set of portfolios and we compare our forecasts to industry-standard risk forecasts that are based on asset and factor covariance matrices. The empirical results make a compelling case for the application and further development of our approach.

Keywords: value at risk, expected shortfall, loss surface, downside risk, tail risk, peaks over thresholds, semi-parametric distribution, Fourier transform, temporal dependence

JEL Classification: C14, C12, C22, C51, C52, C53, E37

Suggested Citation

Goldberg, Lisa R. and Miller, Guy and Weinstein, Jared, Beyond Value at Risk: Forecasting Portfolio Loss at Multiple Horizons (October 11, 2007). Available at SSRN: https://ssrn.com/abstract=1023441 or http://dx.doi.org/10.2139/ssrn.1023441

Lisa R. Goldberg (Contact Author)

University of California, Berkeley ( email )

Department of Statistics
367 Evans Hall
Berkeley, CA 94720-3860
United States

Aperio Group ( email )

3 Harbor Drive
Suite 315
Sausalito, CA 94965
United States

Guy Miller

BARRA, Inc. - Equity Research ( email )

88 Pine Street
2nd Floor
New York, NY 10005
United States

Jared Weinstein

University of California, Los Angeles (UCLA) ( email )

405 Hilgard Avenue
Box 951361
Los Angeles, CA 90095
United States

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