Publication | Open Access
Optimization and supervised machine learning methods for fitting numerical physics models without derivatives <sup>*</sup>
12
Citations
41
References
2020
Year
Numerical AnalysisEngineeringMachine LearningNuclear PhysicsModel TuningReactor PhysicsHyperparameter EstimationNumerical ComputationData ScienceUncertainty QuantificationDerivative-free OptimizationModeling And SimulationMachine Learning MethodsLarge Scale OptimizationFit ParametersInverse ProblemsModel OptimizationComputational ScienceDerivative InformationParameter TuningNumerical Physics ModelsNumerical Methods
Abstract We address the calibration of a computationally expensive nuclear physics model for which derivative information with respect to the fit parameters is not readily available. Of particular interest is the performance of optimization-based training algorithms when dozens, rather than millions or more, of training data are available and when the expense of the model places limitations on the number of concurrent model evaluations that can be performed. As a case study, we consider the Fayans energy density functional model, which has characteristics similar to many model fitting and calibration problems in nuclear physics. We analyze hyperparameter tuning considerations and variability associated with stochastic optimization algorithms and illustrate considerations for tuning in different computational settings.
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