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Neural Network Parameterizations of Electromagnetic Nucleon Form Factors

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abstract

The electromagnetic nucleon form-factors data are studied with artificial feed forward neural networks. As a result the unbiased model-independent form-factor parametrizations are evaluated together with uncertainties. The Bayesian approach for the neural networks is adapted for chi2 error-like function and applied to the data analysis. The sequence of the feed forward neural networks with one hidden layer of units is considered. The given neural network represents a particular form-factor parametrization. The so-called evidence (the measure of how much the data favor given statistical model) is computed with the Bayesian framework and it is used to determine the best form factor parametrization.

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2023 1

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UNVERDICTED 1

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  • Bayesian Reasoning for Physics Informed Neural Networks physics.comp-ph · 2023-08-25 · unverdicted · none · ref 3 · internal anchor

    Introduces Laplace-approximated Bayesian PINNs for automatic loss-weight optimization when solving PDEs such as heat, wave, and Burgers equations.