Lasso regularization for mixture experiments with noise variables
We apply classical and Bayesian lasso regularizations to a family of models with the presence of mixture and process variables. We analyse the performance of these estimates with respect to ordinary least squares estimators by a simulation study and a real data application. Our results demonstrate t...
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Zusammenfassung: | We apply classical and Bayesian lasso regularizations to a family of models
with the presence of mixture and process variables. We analyse the performance
of these estimates with respect to ordinary least squares estimators by a
simulation study and a real data application. Our results demonstrate the
superior performance of Bayesian lasso, particularly via coordinate ascent
variational inference, in terms of variable selection accuracy and response
optimization. |
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DOI: | 10.48550/arxiv.2406.12237 |