Forecasting and Backtesting Gradient Allocations of Expected Shortfall (2401.11701v2)
Abstract: Capital allocation is a procedure for quantifying the contribution of each source of risk to aggregated risk. The gradient allocation rule, also known as the Euler principle, is a prevalent rule of capital allocation under which the allocated capital captures the diversification benefit of the marginal risk as a component of overall risk. This research concentrates on Expected Shortfall (ES) as a regulatory standard and focuses on the gradient allocations of ES, also called ES contributions (ESCs). We present the comprehensive treatment of backtesting the tuple of ESCs in the framework of the traditional and comparative backtests based on the concepts of joint identifiability and multi-objective elicitability. For robust forecast evaluation against the choice of scoring function, we also extend the Murphy diagram, a graphical tool to check whether one forecast dominates another under a class of scoring functions, to the case of ESCs. Finally, leveraging the recent concept of multi-objective elicitability, we propose a novel semiparametric model for forecasting dynamic ESCs based on a compositional regression model. In an empirical analysis of stock returns we evaluate and compare a variety of models for forecasting dynamic ESCs and demonstrate the outstanding performance of the proposed model.
- Aitchison, J. (1982). The statistical analysis of compositional data. Journal of the Royal Statistical Society: Series B (Methodological) 44(2), 139–160.
- Compositional data analysis: where are we and where should we be heading? Mathematical Geology 37, 829–850.
- Andrews, D. W. (1991). Heteroskedasticity and autocorrelation consistent covariance matrix. Econometrica 59(3), 817–858.
- BCBS (2013). Consultative document October 2013. fundamental review of the trading book: A revised market risk framework. Basel Committee on Banking Supervision. Basel: Bank for International Settlements. BIS online publication. No. bcbs265.
- BCBS (2016). Minimum capital requirements for market risk. January 2016. Basel Committee on Banking Supervision. Basel: Bank for International Settlements. BIS online publication. No. d352.
- BCBS (2019). Minimum capital requirements for market risk. February 2019. Basel Committee on Banking Supervision. Basel: Bank for International Settlements. BIS online publication. No. d457.
- Fair estimation of capital risk allocation. Statistics & Risk Modeling 37(1-2), 1–24.
- Forecasting compositional risk allocations. Insurance: Mathematics and Economics 84, 79–86.
- Quantile forecasting based on a bivariate hysteretic autoregressive model with garch errors and time-varying correlations. Applied Stochastic Models in Business and Industry 35(6), 1301–1321.
- Demarta, S. and A. J. McNeil (2005). The t copula and related copulas. International statistical review 73(1), 111–129.
- Denault, M. (2001). Coherent allocation of risk capital. Journal of Risk 4(1), 1–34.
- Optimal capital allocation principles. Journal of Risk and Insurance 79(1), 1–28.
- Diebold, F. X. and R. S. Mariano (1995). Comparing predictive accuracy. Journal of Business & Economic Statistics 13(3), 134–144.
- Dynamic covar modeling. arXiv preprint, 2206.14275.
- Isometric logratio transformations for compositional data analysis. Mathematical Geology 35(3), 279–300.
- Of quantiles and expectiles: consistent scoring functions, choquet representations and forecast rankings. Journal of the Royal Statistical Society Series B: Statistical Methodology 78(3), 505–562.
- What is the best risk measure in practice? a comparison of standard measures. Journal of Risk 18(2), 31–60.
- Fernández, C. and M. F. Steel (1998). On bayesian modeling of fat tails and skewness. Journal of the American Statistical Association 93(441), 359–371.
- Backtesting systemic risk forecasts using multi-objective elicitability. Journal of Business & Economic Statistics, 1–14.
- Higher order elicitability and osband’s principle. The Annals of Statistics 44(4), 1680–1707.
- Fissler, T. and J. F. Ziegel (2019). Order-sensitivity and equivariance of scoring functions. Electronic Journal of Statistics 13, 1166–1211.
- Expected shortfall is jointly elicitable with value at risk-implications for backtesting. Risk Magazine, 58–61.
- Estimating the var-induced euler allocation rule. ASTIN Bulletin: The Journal of the IAA 53(3), 619–635.
- copula: Multivariate Dependence with Copulas. R package version 1.1-2.
- Estimating value at risk of portfolio by conditional copula-garch method. Insurance: Mathematics and Economics 45(3), 315–324.
- The copula-garch model of conditional dependencies: An international stock market application. Journal of International Money and Finance 25(5), 827–853.
- Kalkbrener, M. (2005). An axiomatic approach to capital allocation. Mathematical Finance 15(3), 425–437.
- Modality for scenario analysis and maximum likelihood allocation. Insurance: Mathematics and Economics 97, 24–43.
- Avoiding zero probability events when computing value at risk contributions. Insurance: Mathematics and Economics 106, 173–192.
- On a capital allocation by minimization of some risk indicators. European Actuarial Journal 6(1), 177–196.
- Quantitative risk management: Concepts, techniques and tools. Princeton: Princeton University Press.
- Newey, W. K. and K. D. West (1987). A simple, positive semi-definite, heteroskedasticity and autocorrelation consistent covariance matrix. Econometrica 55(3), 703.
- Nolde, N. and J. F. Ziegel (2017). Elicitability and backtesting: Perspectives for banking regulation. The annals of Applied Statistics 11(4), 1833–1874.
- Patton, A. J. (2020). Comparing possibly misspecified forecasts. Journal of Business & Economic Statistics 38(4), 796–809.
- Dynamic semiparametric models for expected shortfall (and value-at-risk). Journal of Econometrics 211(2), 388–413.
- Compositional data analysis. Wiley Online Library.
- R Core Team (2023). R: A Language and Environment for Statistical Computing. Vienna, Austria: R Foundation for Statistical Computing.
- Tasche, D. (1999). Risk contributions and performance measurement. Working Paper, Techische Universität München.
- Tasche, D. (2008). Capital allocation to business units and sub-portfolios: the euler principle. In A. Resti (Ed.), Pillar II in the New Basel Accord: The Challenge of Economic Capital, pp. 423–453. Risk Books: London.
- Taylor, J. W. (2019). Forecasting value at risk and expected shortfall using a semiparametric approach based on the asymmetric laplace distribution. Journal of Business & Economic Statistics 37(1), 121–133.
- Taylor, J. W. (2022). Forecasting value at risk and expected shortfall using a model with a dynamic omega ratio. Journal of Banking & Finance 140, 106519.
- A Multivariate Generalized Autoregressive Conditional Heteroscedasticity Model With Time-Varying Correlations. Journal of Business & Economic Statistics 20(3), 351–362.
- fGarch: Rmetrics - Autoregressive Conditional Heteroskedastic Modelling. R package version 4022.89.
- Robust forecast evaluation of expected shortfall. Journal of Financial Econometrics 18(1), 95–120.
Sponsored by Paperpile, the PDF & BibTeX manager trusted by top AI labs.
Get 30 days freePaper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.