2020
DOI: 10.20944/preprints202010.0595.v2
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On the Effectiveness of Bayesian AutoML methods for Physics Emulators

Abstract: The adoption of Machine Learning (ML) for building emulators for complex physical processes has seen an exponential rise in the recent years. While neural networks are good function approximators, optimizing the hyper-parameters of the network to reach a global minimum is not trivial, and often needs human knowl- edge and expertise. In this light, automatic ML or autoML methods have gained large interest as they automate the process of network hyper-parameter tuning. In addition, Neural Architecture Search (NA… Show more

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“…That implies the choice of the hyperparameters used in the learning process and the design/architecture of the network has a leading order impact on the expected error and associated uncertainties of the model. In this study, we use an automatic Machine Learning (autoML) paradigm to choose optimum network hyperparameters and automate the network design process, previously introduced in [34]. The autoML uses Bayesian Optimization (BayesOpt) to navigate the range of parameters to find optimal solutions.…”
Section: Regression Networkmentioning
confidence: 99%
“…That implies the choice of the hyperparameters used in the learning process and the design/architecture of the network has a leading order impact on the expected error and associated uncertainties of the model. In this study, we use an automatic Machine Learning (autoML) paradigm to choose optimum network hyperparameters and automate the network design process, previously introduced in [34]. The autoML uses Bayesian Optimization (BayesOpt) to navigate the range of parameters to find optimal solutions.…”
Section: Regression Networkmentioning
confidence: 99%