New methods of entropy-robust estimation for randomized models under limited data

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Abstract

The paper presents a new approach to restoration characteristics randomized models under small amounts of input and output data. This approach proceeds from involving randomized static and dynamic models and estimating the probabilistic characteristics of their parameters. We consider static and dynamic models described by Volterra polynomials. The procedures of robust parametric and non-parametric estimation are constructed by exploiting the entropy concept based on the generalized informational Boltzmann's and Fermi's entropies. © 2014 by the authors.

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APA

Popkov, Y., & Popkov, A. (2014). New methods of entropy-robust estimation for randomized models under limited data. Entropy, 16(2), 675–698. https://doi.org/10.3390/e16020675

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