This study proposes a method for combining regression equations using a relevance network model, a weight generating function, and a generalized mixed operator. The combination of these methods puts a relative weight on the predictions of each of the individual equations and then calculates a weighted average estimate. The method was validated using computer simulation structured within the Statistical Analysis System (SAS). The simulation tests demonstrated that the method is capable of making a prediction that is not significantly different from the true prediction provided the input values for the combined model fall within the valid range of at least one variable. The mean difference between the predictions using the proposed method and...
Multiple regression analysis is a statistical technique for analyzing linear relationships between a...
Multiple linear regression equations, together with the Spearman correlation coefficient and P-value...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for d...
no issnIn model averaging a weighted estimator is constructed based on a set of models, extending mo...
In this paper authors propose the technique, which decreases average forecast error of regression ba...
The simultaneous prediction of average and actual values of study variable in a linear regression mo...
We address the task of choosing prior weights for models that are to be used for weighted model aver...
The simultaneous prediction of average and actual values of study variable in a linear regression mo...
When using linear models, a common practice is to find the single best model fit used in predictions...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for di...
<p>Comparison of linear mixed-effects models predicting weight from other measurable body parameters...
Herein, a modified weighting for combined forecasting methods is established. These weights are used...
Given longitudinal data for several variables, including a given outcome variable, it is desired to ...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
Multiple regression analysis is a statistical technique for analyzing linear relationships between a...
Multiple linear regression equations, together with the Spearman correlation coefficient and P-value...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for d...
no issnIn model averaging a weighted estimator is constructed based on a set of models, extending mo...
In this paper authors propose the technique, which decreases average forecast error of regression ba...
The simultaneous prediction of average and actual values of study variable in a linear regression mo...
We address the task of choosing prior weights for models that are to be used for weighted model aver...
The simultaneous prediction of average and actual values of study variable in a linear regression mo...
When using linear models, a common practice is to find the single best model fit used in predictions...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for di...
<p>Comparison of linear mixed-effects models predicting weight from other measurable body parameters...
Herein, a modified weighting for combined forecasting methods is established. These weights are used...
Given longitudinal data for several variables, including a given outcome variable, it is desired to ...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
Multiple regression analysis is a statistical technique for analyzing linear relationships between a...
Multiple linear regression equations, together with the Spearman correlation coefficient and P-value...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for d...