We discuss tools for the evaluation of probabilistic forecasts and the critique of statistical models for count data. Our proposals include a nonrandomized version of the probability integral transform, marginal calibration diagrams, and proper scoring rules, such as the predictive deviance. In case studies, we critique count regression models for patent data, and assess the predictive performance of Bayesian age-period-cohort models for larynx cancer counts in Germany. The toolbox applies in Bayesian or classical and parametric or nonparametric settings and to any type of ordered discrete outcomes
When dealing with prediction, statistical models have to fit some criteria. The requirements are dif...
Calibration, the statistical consistency of forecast distributions and observations, is a central re...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
Throughout the world there is numerous reasons a person may want to predict an outcome. A type of da...
1. Motivating problem Forecasting cancer rates 2. Predictive model comparison and criticism Goals Pr...
Given a sequence of measurements, a statistical model is a proposed solution to the inverse problem....
We consider the problem of assessing prediction for count time series based on either the Poisson di...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
The problem of predicting a future measurement on an individual given the past measurements is discu...
Massive numbers of new prediction models have been published over the past two decades and the numbe...
We demonstrate how a probabilistic population forecast can be evaluated, when observations for the p...
The post-estimation command prcounts for generating predicted probabilities after using poisson, nbr...
Massive increases in computing power and new database architectures allow data to be stored and proc...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
When dealing with prediction, statistical models have to fit some criteria. The requirements are dif...
Calibration, the statistical consistency of forecast distributions and observations, is a central re...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
Throughout the world there is numerous reasons a person may want to predict an outcome. A type of da...
1. Motivating problem Forecasting cancer rates 2. Predictive model comparison and criticism Goals Pr...
Given a sequence of measurements, a statistical model is a proposed solution to the inverse problem....
We consider the problem of assessing prediction for count time series based on either the Poisson di...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
The problem of predicting a future measurement on an individual given the past measurements is discu...
Massive numbers of new prediction models have been published over the past two decades and the numbe...
We demonstrate how a probabilistic population forecast can be evaluated, when observations for the p...
The post-estimation command prcounts for generating predicted probabilities after using poisson, nbr...
Massive increases in computing power and new database architectures allow data to be stored and proc...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
When dealing with prediction, statistical models have to fit some criteria. The requirements are dif...
Calibration, the statistical consistency of forecast distributions and observations, is a central re...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...