Working Paper
Spectral Backtests of Forecast Distributions with Application to Risk Management
Abstract: We study a class of backtests for forecast distributions in which the test statistic is a spectral transformation that weights exceedance events by a function of the modeled probability level. The choice of the kernel function makes explicit the user's priorities for model performance. The class of spectral backtests includes tests of unconditional coverage and tests of conditional coverage. We show how the class embeds a wide variety of backtests in the existing literature, and propose novel variants as well. In an empirical application, we backtest forecast distributions for the overnight P&L of ten bank trading portfolios. For some portfolios, test results depend materially on the choice of kernel.
Keywords: Backtesting; Risk management; Volatility;
JEL Classification: C52; G21; G28; G32;
https://doi.org/10.17016/FEDS.2018.021
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File(s): File format is application/pdf https://www.federalreserve.gov/econres/feds/files/2018021pap.pdf
Bibliographic Information
Provider: Board of Governors of the Federal Reserve System (U.S.)
Part of Series: Finance and Economics Discussion Series
Publication Date: 2018-03-23
Number: 2018-021
Pages: 40 pages