This paper introduces new methods of estimating Value-at-Risk (VaR) using Range-Based GARCH (General Autoregressive Conditional Heteroskedasticity) models. These models, which could be either based on the Parkinson Range or Garman-Klasss Range, are applied to 10 stock market indices of selected countries in the Asia-Pacific Region. The results are compared using the traditional methods such as the econometric method based on the ARMA-GARCH models and RiskMetricsTM. The performance of the different models is assessed using the out-of-sample VaR forecasts. Series of likelihood ratio (LR) tests namely: LR of unconditional coverage (LRuc), LR of independence (LRind), and LR of conditional coverage (LRcc) are performed for comparison. The result...
Risk management or risk predicting are closely related with the market volatility which affect the r...
In this paper the value at risk (VaR) forecasts are compared using three different GARCH models; ARC...
In the financial industry, it has been increasingly popular to measure risk. One of the most common ...
This paper introduces new methods of estimating Value-at-Risk (VaR) using Range-Based GARCH (General...
Value at Risk (VaR) has already becomes a standard measurement that must be carried out by financial...
ABSTRACT This article considers range-based volatility modeling for identifying and forecasting cond...
Value at risk (VaR) is a single, summary, statistical measure of possible asset losses. This paper e...
The idea of statistical learning can be applied in financial risk management. In recent years, value...
This paper studies seven GARCH models, including RiskMetrics and two long memory GARCH models, in Va...
We study the performance of range-based models over varying market conditions and compare their perf...
We compared different newer models (e.g. CAViaR and one of the most recent approaches HAR-QREG) to t...
Purpose. This paper tests the accuracies of the models that predict the Value-at-Risk (VaR) for the ...
The purpose of this paper is to investigate some statistical methods to estimate the value-at-Risk (...
Background: In light of the latest global financial crisis and the ongoing sovereign debt crisis, ac...
ABSTRACT: This paper explores three models to estimate volatility: exponential weighted moving avera...
Risk management or risk predicting are closely related with the market volatility which affect the r...
In this paper the value at risk (VaR) forecasts are compared using three different GARCH models; ARC...
In the financial industry, it has been increasingly popular to measure risk. One of the most common ...
This paper introduces new methods of estimating Value-at-Risk (VaR) using Range-Based GARCH (General...
Value at Risk (VaR) has already becomes a standard measurement that must be carried out by financial...
ABSTRACT This article considers range-based volatility modeling for identifying and forecasting cond...
Value at risk (VaR) is a single, summary, statistical measure of possible asset losses. This paper e...
The idea of statistical learning can be applied in financial risk management. In recent years, value...
This paper studies seven GARCH models, including RiskMetrics and two long memory GARCH models, in Va...
We study the performance of range-based models over varying market conditions and compare their perf...
We compared different newer models (e.g. CAViaR and one of the most recent approaches HAR-QREG) to t...
Purpose. This paper tests the accuracies of the models that predict the Value-at-Risk (VaR) for the ...
The purpose of this paper is to investigate some statistical methods to estimate the value-at-Risk (...
Background: In light of the latest global financial crisis and the ongoing sovereign debt crisis, ac...
ABSTRACT: This paper explores three models to estimate volatility: exponential weighted moving avera...
Risk management or risk predicting are closely related with the market volatility which affect the r...
In this paper the value at risk (VaR) forecasts are compared using three different GARCH models; ARC...
In the financial industry, it has been increasingly popular to measure risk. One of the most common ...