Under a general regression setting, we propose an optimal unconditional prediction procedure for future responses. The resulting prediction intervals or regions have a desirable average coverage level over a set of covariate vectors of interest. When the working model is not correctly specified, the traditional conditional prediction method is generally invalid. On the other hand, one can empirically calibrate the above unconditional procedure and also obtain its crossvalidated counterpart. Various large and small sample properties of these unconditional methods are examined analytically and numerically. We find that the 𝒦-fold crossvalidated procedure performs exceptionally well even for cases with rather small sample sizes. The new p...
Predicting the value of a variable Y corresponding to a future value of an ex-planatory variable X, ...
Finding a well-predicting model is one of the main goals of regression analysis. However, to evaluat...
We argue that the current framework for predictive ability testing (e.g., West, 1996) is not necessa...
The construction of a reliable, practically useful prediction rule for future responses is heavily d...
The construction of a reliable, practically useful prediction rule for future responses is heavily d...
Both Bayesian and classical approaches are used to derive the prediction distribution of a set of fu...
The problem of predicting a future measurement on an individual given the past measurements is discu...
This paper presents asymptotically optimal prediction intervals and prediction regions. The predicti...
The Model-Free Prediction Principle expounded upon in this monograph is based on the simple notion o...
We propose a robust method for constructing conditionally valid prediction intervals based on models...
Abstract High-dimensional prediction typically comprises vari-able selection followed by least-squar...
Many statistical and economic criteria must influence the overall evaluation of econometric systems,...
Model diagnostics and forecast evaluation are two sides of the same coin. A common principle is that...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
We consider the problem of predicting values of a random process or field satisfying a linear model ...
Predicting the value of a variable Y corresponding to a future value of an ex-planatory variable X, ...
Finding a well-predicting model is one of the main goals of regression analysis. However, to evaluat...
We argue that the current framework for predictive ability testing (e.g., West, 1996) is not necessa...
The construction of a reliable, practically useful prediction rule for future responses is heavily d...
The construction of a reliable, practically useful prediction rule for future responses is heavily d...
Both Bayesian and classical approaches are used to derive the prediction distribution of a set of fu...
The problem of predicting a future measurement on an individual given the past measurements is discu...
This paper presents asymptotically optimal prediction intervals and prediction regions. The predicti...
The Model-Free Prediction Principle expounded upon in this monograph is based on the simple notion o...
We propose a robust method for constructing conditionally valid prediction intervals based on models...
Abstract High-dimensional prediction typically comprises vari-able selection followed by least-squar...
Many statistical and economic criteria must influence the overall evaluation of econometric systems,...
Model diagnostics and forecast evaluation are two sides of the same coin. A common principle is that...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
We consider the problem of predicting values of a random process or field satisfying a linear model ...
Predicting the value of a variable Y corresponding to a future value of an ex-planatory variable X, ...
Finding a well-predicting model is one of the main goals of regression analysis. However, to evaluat...
We argue that the current framework for predictive ability testing (e.g., West, 1996) is not necessa...