In agricultural research, it is often difficult to construct a single "best" predictive model based on data collected under field conditions. We studied the relative prediction performance of combining empirical linear models over the single best model in relation to number of models to be combined, number of variates in the models, magnitude of residual errors, and weighting schemes. Two scenarios were simulated: the modeler did or did not know the relative of performance of the models to be combined. For the former case, model averaging is achieved either through weights based on the Akaike Information Criterion (AIC) statistic or with arithmetic averaging; for the latter case, only the arithmetic averaging is possible (because the relati...
Multi-model ensembles are becoming increasingly accepted for the estimation of agricultural carbon-n...
The advantages of repeating experiments in several locations and years are discussed and standard me...
When evaluating the performances of simulation models, the perception of the quality of the outputs ...
In agricultural research, it is often difficult to construct a single "best" predictive model based ...
In ecology, the true causal structure for a given problem is often not known, and several plausible ...
I use two examples to illustrate three methods for model averaging: using AIC weights, using BIC wei...
9 pagesInternational audienceInformation-theory procedures are powerful tools for multimodel inferen...
In ecology, the true causal structure for a given problem is often not known, and several plausible ...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SEDYVIN [ADD1_IRSTEA]Biodiversité et fonctionnalités éco...
International audienceA recent innovation in assessment of climate change impact on agricultural pro...
The systematic use of crop multi-model ensembles (MMEs) has recently become widespread. In these stu...
Ensembling combines the predictions made by individual component base models with the goal of achiev...
The use of a variety of metrics is advocated to assess model performance but correlated metrics may ...
Ensembling combines the predictions made by individual component base models with the goal of achiev...
Model combining (mixing) methods have been proposed in recent years to deal with uncertainty in mode...
Multi-model ensembles are becoming increasingly accepted for the estimation of agricultural carbon-n...
The advantages of repeating experiments in several locations and years are discussed and standard me...
When evaluating the performances of simulation models, the perception of the quality of the outputs ...
In agricultural research, it is often difficult to construct a single "best" predictive model based ...
In ecology, the true causal structure for a given problem is often not known, and several plausible ...
I use two examples to illustrate three methods for model averaging: using AIC weights, using BIC wei...
9 pagesInternational audienceInformation-theory procedures are powerful tools for multimodel inferen...
In ecology, the true causal structure for a given problem is often not known, and several plausible ...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SEDYVIN [ADD1_IRSTEA]Biodiversité et fonctionnalités éco...
International audienceA recent innovation in assessment of climate change impact on agricultural pro...
The systematic use of crop multi-model ensembles (MMEs) has recently become widespread. In these stu...
Ensembling combines the predictions made by individual component base models with the goal of achiev...
The use of a variety of metrics is advocated to assess model performance but correlated metrics may ...
Ensembling combines the predictions made by individual component base models with the goal of achiev...
Model combining (mixing) methods have been proposed in recent years to deal with uncertainty in mode...
Multi-model ensembles are becoming increasingly accepted for the estimation of agricultural carbon-n...
The advantages of repeating experiments in several locations and years are discussed and standard me...
When evaluating the performances of simulation models, the perception of the quality of the outputs ...