Ensemble of metamodels with optimized weight factors |
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Authors: | E. Acar M. Rais-Rohani |
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Affiliation: | (1) Center for Advanced Vehicular Systems, Mississippi State University, Mississippi State, MS 39762, USA;(2) Department of Aerospace Engineering, Mississippi State University, Mississippi State, MS 39762, USA |
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Abstract: | Approximate mathematical models (metamodels) are often used as surrogates for more computationally intensive simulations.
The common practice is to construct multiple metamodels based on a common training data set, evaluate their accuracy, and
then to use only a single model perceived as the best while discarding the rest. This practice has some shortcomings as it
does not take full advantage of the resources devoted to constructing different metamodels, and it is based on the assumption
that changes in the training data set will not jeopardize the accuracy of the selected model. It is possible to overcome these
drawbacks and to improve the prediction accuracy of the surrogate model if the separate stand-alone metamodels are combined
to form an ensemble. Motivated by previous research on committee of neural networks and ensemble of surrogate models, a technique
for developing a more accurate ensemble of multiple metamodels is presented in this paper. Here, the selection of weight factors
in the general weighted-sum formulation of an ensemble is treated as an optimization problem with the desired solution being
one that minimizes a selected error metric. The proposed technique is evaluated by considering one industrial and four benchmark
problems. The effect of different metrics for estimating the prediction error at either the training data set or a few validation
points is also explored. The results show that the optimized ensemble provides more accurate predictions than the stand-alone
metamodels and for most problems even surpassing the previously reported ensemble approaches. |
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Keywords: | Metamodeling Surrogate modeling Optimization Ensemble |
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