Model selection criteria often arise by constructing estimators of measures known as expected overall discrepancies. Such measures provide an evaluation of a candidate model by quantifying the disparity between the true model which generated the observed data and the candidate model. However, attention is seldom paid to the problem of accounting for discrepancy estimator variability, or to the companion problem of establishing discrepancy estimators with cer-tain optimality properties. The expected overall Gauss (error sum of squares) discrepancy for a linear model can be decomposed into a term representing the estimation error, due to unknown model coefficients, and a term representing the approximation error, or bias, due to model misspec...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
Abstract: The linear statistical model provides a flexible approach to quan-tifying the relationship...
An important statistical application is the problem of determining an appropriate set of input varia...
A model selection criterion is often formulated by constructing an approx-imately unbiased estimator...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
The “−2 ” in the definition makes the log-likelihood loss for the Gaussian distribution match square...
There is often some uncertainty as to the exact number of predictors to include in the specification...
There is often some uncertainty as to the exact number of predictors to include in the specification...
The conceptual predictive statistic, Cp, is a widely used criterion for model selection in linear re...
When performing a regression or classification analysis, one needs to specify a statistical model. T...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
Most rational expectations models involve equations in which the dependent variable is a function of...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
Abstract: The linear statistical model provides a flexible approach to quan-tifying the relationship...
An important statistical application is the problem of determining an appropriate set of input varia...
A model selection criterion is often formulated by constructing an approx-imately unbiased estimator...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
The “−2 ” in the definition makes the log-likelihood loss for the Gaussian distribution match square...
There is often some uncertainty as to the exact number of predictors to include in the specification...
There is often some uncertainty as to the exact number of predictors to include in the specification...
The conceptual predictive statistic, Cp, is a widely used criterion for model selection in linear re...
When performing a regression or classification analysis, one needs to specify a statistical model. T...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
Most rational expectations models involve equations in which the dependent variable is a function of...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
Problems of the analysis of data with incomplete observations are all too familiar in statistics. Th...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...