Estimations by stable motions and applications

03/20/2020
by   Anirban Das, et al.
0

We propose a nonparametric parameter estimation of confidence intervals when the underlying has large or infinite variance. We explain the method by a simple numerical example and provide an application to estimate the coupling strength in neuronal networks.

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