The consistent ranking of multivariate volatility models by means of statistical loss function is a challenging research field, because it concerns the quality of the proxy chosen to replace the unobserved volatility, the set of competing models to be ranked and the kind of loss function. The existent works only consider the ranking of multivariate GARCH (MGARCH) models, based on daily frequency of the returns. Less is known about the behaviour of the models that directly use the realized covariance (RCOV), the proxy that generally provides a consistent estimate of the unobserved volatility. The aim of this paper is to evaluate which model has the best forecast volatility accuracy, from a statistical and economic point of view. For the firs...
The ranking of multivariate volatility models is inherently problematic because when the unobservabl...
In the last two decades the literature has been focusing on the development of dynamic models for pr...
The evaluation of volatility forecasts is not straightforward and some issues can arise. A standard ...
The consistent ranking of multivariate volatility models by means of statistical loss function is a ...
A large number of parameterizations have been proposed to model conditional variance dynamics in a m...
The evaluation of multivariate volatility models can be done through a direct or indirect approach....
Multivariate volatility forecasts are an important input in many financial applications, in particul...
Un grand nombre de méthodes de paramétrage ont été proposées dans le but de modéliser la dynamique d...
A large number of parameterizations have been proposed to model conditional vari-ance dynamics in a ...
The performance of techniques for evaluating univariate volatility forecasts are well understood. In...
This paper analyzes the forecast accuracy of the multivariate realized volatility model introduced b...
This paper analyzes the forecast accuracy of the multivariate realized volatility model introduced b...
The performance of techniques for evaluating multivariate volatility forecasts are not yet as well u...
The ranking of multivariate volatility models is inherently problematic because when the unobservabl...
In the last two decades the literature has been focusing on the development of dynamic models for pr...
The evaluation of volatility forecasts is not straightforward and some issues can arise. A standard ...
The consistent ranking of multivariate volatility models by means of statistical loss function is a ...
A large number of parameterizations have been proposed to model conditional variance dynamics in a m...
The evaluation of multivariate volatility models can be done through a direct or indirect approach....
Multivariate volatility forecasts are an important input in many financial applications, in particul...
Un grand nombre de méthodes de paramétrage ont été proposées dans le but de modéliser la dynamique d...
A large number of parameterizations have been proposed to model conditional vari-ance dynamics in a ...
The performance of techniques for evaluating univariate volatility forecasts are well understood. In...
This paper analyzes the forecast accuracy of the multivariate realized volatility model introduced b...
This paper analyzes the forecast accuracy of the multivariate realized volatility model introduced b...
The performance of techniques for evaluating multivariate volatility forecasts are not yet as well u...
The ranking of multivariate volatility models is inherently problematic because when the unobservabl...
In the last two decades the literature has been focusing on the development of dynamic models for pr...
The evaluation of volatility forecasts is not straightforward and some issues can arise. A standard ...