This work considers several examples of inverse problems and compares the performance of each model to predict the unknown potentials and refractive indices respectively, from a given small set of the lowest eigenvalues.
Authors
Nikolaos Pallikarakis
1 papers
Andreas Ntargaras
1 papers
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