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New Methods of Entropy-Robust Estimation for Randomized Models under Limited Data

机译:有限数据下随机模型熵鲁棒估计的新方法

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摘要

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.
机译:本文提出了一种在少量输入和输出数据下恢复特征随机模型的新方法。该方法从涉及随机静态和动态模型并估计其参数的概率特征出发。我们考虑由Volterra多项式描述的静态和动态模型。鲁棒性参数和非参数估计的过程是通过利用基于广义信息Boltzmann和Fermi熵的熵概念构建的。

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