The focus of this article is on the quantification of sampling variation in frequentist probabilistic forecasts. We propose a method of constructing confidence sets that respects the functional nature of the forecast distribution, and use animated graphics to visualize the impact of parameter uncertainty on the location, dispersion, and shape of the distribution. The confidence sets are derived via the inversion of a Wald test, and the ellipsoid that defines the boundary of the set computed numerically. A wide range of linear and nonlinear time series models—encompassing long memory, state space, and mixture specifications—is used to demonstrate the procedure, based on artificially generated data. An empirical example in which distributiona...
This thesis consists of four papers that study several topics related to expert evaluation and aggre...
Surveys of professional forecasters produce precise and timely point forecasts for key macroeconomic...
Probabilistic forecast plays a major role in many applications where forecast is needed together wit...
<p>The focus of this article is on the quantification of sampling variation in frequentist probabili...
This paper presents a new sampling-based methodology designed to facilitate the visual analysis of t...
Density forecasts contain a complete description of the uncertainty associated with a point forecast...
An uncertain (scalar, vector, tensor) field is usually perceived as a discrete random field with a p...
In this thesis we analyse the effect on random sampling variation on distributional forecasts and va...
The properties of the normal distribution under linear transformation, as well the easy way to compu...
This thesis consists in three essays on predictive distributions, in particular their combination, c...
In predicting conditional covariance matrices of financial portfolios, practitioners arerequired to ...
Data ensembles are often used to infer statistics to be used for a summary display of an uncertain p...
This dissertation describes methodologies for forecasting and testing integer valued time series tha...
Several methods have been proposed in the last few years for evaluating uncertainty in forecasts pro...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...
This thesis consists of four papers that study several topics related to expert evaluation and aggre...
Surveys of professional forecasters produce precise and timely point forecasts for key macroeconomic...
Probabilistic forecast plays a major role in many applications where forecast is needed together wit...
<p>The focus of this article is on the quantification of sampling variation in frequentist probabili...
This paper presents a new sampling-based methodology designed to facilitate the visual analysis of t...
Density forecasts contain a complete description of the uncertainty associated with a point forecast...
An uncertain (scalar, vector, tensor) field is usually perceived as a discrete random field with a p...
In this thesis we analyse the effect on random sampling variation on distributional forecasts and va...
The properties of the normal distribution under linear transformation, as well the easy way to compu...
This thesis consists in three essays on predictive distributions, in particular their combination, c...
In predicting conditional covariance matrices of financial portfolios, practitioners arerequired to ...
Data ensembles are often used to infer statistics to be used for a summary display of an uncertain p...
This dissertation describes methodologies for forecasting and testing integer valued time series tha...
Several methods have been proposed in the last few years for evaluating uncertainty in forecasts pro...
This paper concerns prediction from the frequentist point of view. The aim is to define a well-calib...
This thesis consists of four papers that study several topics related to expert evaluation and aggre...
Surveys of professional forecasters produce precise and timely point forecasts for key macroeconomic...
Probabilistic forecast plays a major role in many applications where forecast is needed together wit...