2023
DOI: 10.1002/acs.3701
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Data‐driven performance metrics for neural network learning

Angelo Alessandri,
Mauro Gaggero,
Marcello Sanguineti

Abstract: SummaryEffectiveness of data‐driven neural learning in terms of both local mimima trapping and convergence rate is addressed. Such issues are investigated in a case study involving the training of one‐hidden‐layer feedforward neural networks with the extended Kalman filter, which reduces the search for the optimal network parameters to a state estimation problem, as compared to descent‐based methods. In this respect, the performances of the training are assessed by using the Cramér‐Rao bound, along with a nove… Show more

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