Link
Abstract
Fundamental properties of conditional value-at-risk (CVaR), as a measure of risk with significant advantages over value-at-risk (VaR), are derived for loss distributions in finance that can involve discreetness. Such distributions are of particular importance in applications because of the prevalence of models based on scenarios and finite sampling. CVaR is able to quantify dangers beyond VaR and moreover it is coherent. It provides optimization short-cuts which, through linear programming techniques, make practical many large-scale calculations that could otherwise be out of reach. The numerical efficiency and stability of such calculations, shown in several case studies, are illustrated further with an example of index tracking.
Volume
26
Page
1443-1471
Number
7
Year
2002
Keywords
Value-at-Risk; Conditional value-at-risk; Mean shortfall; Coherent risk measures; Risk sampling; Scenarios; Hedging; Index tracking; Portfolio optimization; Risk management
Categories
New Risk Measures
Publications
Journal of Banking & Finance