Optimal probabilistic forecasts for risk management
This paper explores the implications of producing forecast distributions that are optimized according to scoring rules that are relevant to financial risk management. We assess the predictive performance of optimal forecasts from potentially misspecified models for i) value-at-risk and expected shor...
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Zusammenfassung: | This paper explores the implications of producing forecast distributions that
are optimized according to scoring rules that are relevant to financial risk
management. We assess the predictive performance of optimal forecasts from
potentially misspecified models for i) value-at-risk and expected shortfall
predictions; and ii) prediction of the VIX volatility index for use in hedging
strategies involving VIX futures. Our empirical results show that calibrating
the predictive distribution using a score that rewards the accurate prediction
of extreme returns improves the VaR and ES predictions. Tail-focused predictive
distributions are also shown to yield better outcomes in hedging strategies
using VIX futures. |
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DOI: | 10.48550/arxiv.2303.01651 |