4.7 Article

Bayesian network based probabilistic weighted high-order fuzzy time series forecasting

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 237, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2023.121430

Keywords

Bayesian network; Fuzzy time series; Fuzzy-probabilistic forecasting; Fuzzy relationship; Dependence relationship; Uncertainty modeling

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This article proposes a probabilistic weighted high-order fuzzy time series forecasting model using Bayesian network to address complex relationships and uncertainty in time series. The combination of fuzzy relationships and dependence relationships provides a comprehensive representation of the complex relationships. The proposed method calculates fuzzy-probabilistic weights to model uncertainty and has been validated to outperform existing models.
The present article proposes a probabilistic weighted high-order fuzzy time series (FTS) forecasting model employing Bayesian network (BN) to address complex relationships and uncertainty hidden in time series. As considerable FTS forecasting models considers the fuzzy relationships between precedent moments and the consequent moment as the complex relationships in time series, BN structure learning is utilized to discover and model dependence relationships between each moment in time series. The combination of the fuzzy relationships modeled by fuzzy logical relationships and the dependence relationships modeled by the BN provides a comprehensive establishment and representation of the complex relationships inherent in time series data. The proposed FTS forecasting method calculates the fuzzy-probabilistic weights of each fuzzy logical relationship group using the improved fuzzy empirical probabilities to model both aleatoric and epistemic uncertainty in time series. To this end, the improved fuzzy empirical probabilities are formulated by integrating fuzzy empirical probabilities with the BN to incorporate dependence relationships from the original time series into the FTS forecasting procedure. The efficiency of the proposed forecasting model is validated on fourteen publicly available time series. Experimental results confirm the better performance of the proposed method comparing with nine existing FTS models and six numeric models. Hypothesis tests also validate the robustness and reliability of the proposed method.

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