Value-at-Risk (VaR) models provide quantile forecasts for future returns. If a loss is greater than or equal to the corresponding VaR forecast, we have a breach. A VaR model is usually validated by considering realized breach sequences. Several statistical tests exist for this purpose, called backtests. This paper presents an extensive study of the statistical power for the most recognized backtests. We simulate returns and estimate VaR forecasts, resulting in breach sequences not satisfying the null hypothesis of the backtests. We apply the backtests on the data, and assess their ability to reject misspecified models. The Geometric conditional coverage test by Berkowitz et al. (2011) performs best. A minimum amount of observations is neede...
This paper explores avenues to improve VaR backtesting against violations of unconditional coverage,...
Risk management methods in finance have put a lot of weight on the Value-at-Risk, making it the mos...
We propose a new set of formal backtests for VaR-forecasts that significantly improve upon existing ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...
In this paper we propose a new tool for backtesting that examines the quality of Value-at- Risk (VaR...
One of the implications of the creation of Basel Committee on Banking Supervision was the implementa...
This paper proposes a new test of Value at Risk (VaR) validation. Our test exploits the idea that th...
This paper proposes an evaluation of backtests that examine the accuracy of Value-at-Risk (VaR) fore...
This paper proposes an evaluation of backtests that examine the accuracy of Value-at-Risk (VaR) fore...
This paper develops a new test to evaluate Value at Risk (VaR) forecasts. VaR is a standard risk mea...
Revised version of http://hdl.handle.net/2022/1037One of the implications of the creation of Basel C...
Academics and practitioners have extensively studied Value-at-Risk (VaR) to propose a unique risk ma...
Financial risk model evaluation or backtesting is a key part of the internal model’s approach to mar...
This paper explores avenues to improve VaR backtesting against violations of unconditional coverage,...
Risk management methods in finance have put a lot of weight on the Value-at-Risk, making it the mos...
We propose a new set of formal backtests for VaR-forecasts that significantly improve upon existing ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...
In this paper we propose a new tool for backtesting that examines the quality of Value-at- Risk (VaR...
One of the implications of the creation of Basel Committee on Banking Supervision was the implementa...
This paper proposes a new test of Value at Risk (VaR) validation. Our test exploits the idea that th...
This paper proposes an evaluation of backtests that examine the accuracy of Value-at-Risk (VaR) fore...
This paper proposes an evaluation of backtests that examine the accuracy of Value-at-Risk (VaR) fore...
This paper develops a new test to evaluate Value at Risk (VaR) forecasts. VaR is a standard risk mea...
Revised version of http://hdl.handle.net/2022/1037One of the implications of the creation of Basel C...
Academics and practitioners have extensively studied Value-at-Risk (VaR) to propose a unique risk ma...
Financial risk model evaluation or backtesting is a key part of the internal model’s approach to mar...
This paper explores avenues to improve VaR backtesting against violations of unconditional coverage,...
Risk management methods in finance have put a lot of weight on the Value-at-Risk, making it the mos...
We propose a new set of formal backtests for VaR-forecasts that significantly improve upon existing ...