Journal of Finance and Data Science (Nov 2022)

Measuring tail risks

  • Kan Chen,
  • Tuoyuan Cheng

Journal volume & issue
Vol. 8
pp. 296 – 308

Abstract

Read online

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 n (or equivalently the length of the time interval) by a power law, MPMR(n) ∝ nη, where η is the scaling exponent (SE). 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 of the size distribution, ξ = 1/η. 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