2022
DOI: 10.15276/aait.05.2022.17
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Modeling and forecasting of nonlinear nonstationary processes based on the Bayesian structural time series

Abstract: The article describes an approach to modelling and forecasting non-linear non-stationary time series for various purposes using Bayesian structural time series. The concepts of non-linearity and non-stationarity, as well as methods for processing non-linearity’sand non-stationarity in the construction of forecasting models are considered. The features of the Bayesian approach in the processing of nonlinearities and nonstationaryare presented. An approach to the construction of probabilistic-st… Show more

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Cited by 1 publication
(2 citation statements)
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References 34 publications
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“…ARIMA statistical models, the method of fitting generalized additive models (GAM), Bayesian structural time series models (BSTS) [33] and forward propagation artificial neural networks (NNAR) are used in the modeling block as basic forecasting models. These methods were chosen because of their ability to recognize complex patterns in time series.…”
Section: Development Of the Architecture Of The Information Analytic ...mentioning
confidence: 99%
See 1 more Smart Citation
“…ARIMA statistical models, the method of fitting generalized additive models (GAM), Bayesian structural time series models (BSTS) [33] and forward propagation artificial neural networks (NNAR) are used in the modeling block as basic forecasting models. These methods were chosen because of their ability to recognize complex patterns in time series.…”
Section: Development Of the Architecture Of The Information Analytic ...mentioning
confidence: 99%
“…If an improvement in forecast accuracy is not found, it is necessary to return to the stage of forming basic models, or to change their number and type of combination. Such a structural scheme fully corresponds to the process of building combined forecasts for time series based on simple averaging of forecasts, weighted combination of forecasts and regression [33]. To increase the accuracy of the combined forecast, the forecasting procedure is performed on the models with close variance values.…”
Section: Development Of the Architecture Of The Information Analytic ...mentioning
confidence: 99%