English

Measuring Tail Risks

Risk Management 2025-06-17 v2 Statistical Finance

Abstract

Value at risk (VaR) and expected shortfall (ES) are common high quantile-based risk measures adopted in financial regulations and risk management. In this paper, we propose a tail risk measure based on the most probable maximum size of risk events (MPMR) that can occur over a length of time. MPMR underscores the dependence of the tail risk on the risk management time frame. Unlike VaR and ES, MPMR does not require specifying a confidence level. We derive the risk measure analytically for several well-known distributions. In particular, for the case where the size of the risk event follows a power law or Pareto distribution, we show that MPMR also scales with the number of observations nn (or equivalently the length of the time interval) by a power law, MPMR(n)nη\text{MPMR}(n) \propto n^{\eta}, where η\eta is the scaling exponent. The scale invariance allows for reasonable estimations of long-term risks based on the extrapolation of more reliable estimations of short-term risks. The scaling relationship also gives rise to a robust and low-bias estimator of the tail index (TI) ξ\xi of the size distribution, ξ=1/η\xi = 1/\eta. We demonstrate the use of this risk measure for describing the tail risks in financial markets as well as the risks associated with natural hazards (earthquakes, tsunamis, and excessive rainfall).

Keywords

Cite

@article{arxiv.2209.07092,
  title  = {Measuring Tail Risks},
  author = {Kan Chen and Tuoyuan Cheng},
  journal= {arXiv preprint arXiv:2209.07092},
  year   = {2025}
}