We introduce a class of quantile‐based risk measures that generalize Value at Risk (VaR) and, likewise Expected Shortfall (ES), take into account both the frequency and the severity of losses. Under VaR a single confidence level is assigned regardless of the size of potential losses. We allow for a range of confidence levels that depend on the loss magnitude. The key ingredient is a benchmark loss distribution (BLD), that is, a function that associates to each potential loss a maximal acceptable probability of occurrence. The corresponding risk measure, called Loss VaR (LVaR), determines the minimal capital injection that is required to align the loss distribution of a risky position to the target BLD. By design, one has full flexibility in...
Abstract. Maximum drawdown, the largest cumulative loss from peak to trough, is one of the most wide...
We have developed a regime switching framework to compute the Value at Risk and Expected Shortfall m...
In this chapter we develop the Complementary Loss Evaluations (CLE) framework for computing the capi...
We introduce a class of quantile-based risk measures that generalize Value at Risk (VaR) and, likewi...
The current subprime crisis has prompted us to look again into the nature of risk at the tail of the...
Expected shortfall (ES) has been widely accepted as a risk measure that is conceptually superior to ...
This thesis intends to examine a risk measure used for estimating a potential future loss. The risk ...
We introduce and study the main properties of a class of convex risk measures that refine Expected S...
Value at Risk (VaR) is one of the most popular tools used to estimate exposure to market risks, and ...
Expected Shortfall (ES) has been widely accepted as a risk measure that is conceptually superior to ...
Value at risk (VaR) is a prevalent risk measure used in financial risk management. The calculation o...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
Risk Measurement and Management in a Crisis-Prone World The current \u85nancial crisis has highlight...
Since Value-at-Risk (VaR) disregards tail losses beyond the VaR boundary, the expected shortfall (ES...
The work introduces a family of new risk measures, “VaR to the power of t”. The aim of the work is t...
Abstract. Maximum drawdown, the largest cumulative loss from peak to trough, is one of the most wide...
We have developed a regime switching framework to compute the Value at Risk and Expected Shortfall m...
In this chapter we develop the Complementary Loss Evaluations (CLE) framework for computing the capi...
We introduce a class of quantile-based risk measures that generalize Value at Risk (VaR) and, likewi...
The current subprime crisis has prompted us to look again into the nature of risk at the tail of the...
Expected shortfall (ES) has been widely accepted as a risk measure that is conceptually superior to ...
This thesis intends to examine a risk measure used for estimating a potential future loss. The risk ...
We introduce and study the main properties of a class of convex risk measures that refine Expected S...
Value at Risk (VaR) is one of the most popular tools used to estimate exposure to market risks, and ...
Expected Shortfall (ES) has been widely accepted as a risk measure that is conceptually superior to ...
Value at risk (VaR) is a prevalent risk measure used in financial risk management. The calculation o...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
Risk Measurement and Management in a Crisis-Prone World The current \u85nancial crisis has highlight...
Since Value-at-Risk (VaR) disregards tail losses beyond the VaR boundary, the expected shortfall (ES...
The work introduces a family of new risk measures, “VaR to the power of t”. The aim of the work is t...
Abstract. Maximum drawdown, the largest cumulative loss from peak to trough, is one of the most wide...
We have developed a regime switching framework to compute the Value at Risk and Expected Shortfall m...
In this chapter we develop the Complementary Loss Evaluations (CLE) framework for computing the capi...