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Entropy-Randomized Forecasting of Stochastic Dynamic Regression Models

Author

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  • Yuri S. Popkov

    (Federal Research Center “Computer Science and Control” of Russian Academy of Sciences, Moscow 119333, Russia
    Institute of Control Sciences of Russian Academy of Sciences, Moscow 117997, Russia
    Department of Software Engineering, ORT Braude College, Carmiel 2161002, Israel)

  • Alexey Yu. Popkov

    (Federal Research Center “Computer Science and Control” of Russian Academy of Sciences, Moscow 119333, Russia)

  • Yuri A. Dubnov

    (Federal Research Center “Computer Science and Control” of Russian Academy of Sciences, Moscow 119333, Russia
    National Research University “Higher School of Economics”, Moscow 101000, Russia)

  • Dimitri Solomatine

    (IHE Delft Institute for Water Education, 2601 Delft, The Netherlands)

Abstract

We propose a new forecasting procedure that includes randomized hierarchical dynamic regression models with random parameters, measurement noises and random input. We developed the technology of entropy-randomized machine learning, which includes the estimation of characteristics of a dynamic regression model and its testing by generating ensembles of predicted trajectories through the sampling of the entropy-optimal probability density functions of the model parameters and measurement noises. The density functions are determined at the learning stage by solving the constrained maximization problem of an information entropy functional subject to the empirical balances with real data. The proposed procedure is applied to the randomized forecasting of the daily electrical load in a regional power system. We construct a two-layer dynamic model of the daily electrical load. One of the layers describes the dependence of electrical load on ambient temperature while the other simulates the stochastic quasi-fluctuating temperature dynamics.

Suggested Citation

  • Yuri S. Popkov & Alexey Yu. Popkov & Yuri A. Dubnov & Dimitri Solomatine, 2020. "Entropy-Randomized Forecasting of Stochastic Dynamic Regression Models," Mathematics, MDPI, vol. 8(7), pages 1-20, July.
  • Handle: RePEc:gam:jmathe:v:8:y:2020:i:7:p:1119-:d:381869
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    References listed on IDEAS

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    Cited by:

    1. Yuri S. Popkov & Yuri A. Dubnov & Alexey Yu. Popkov, 2023. "Reinforcement Procedure for Randomized Machine Learning," Mathematics, MDPI, vol. 11(17), pages 1-14, August.

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