Keywords and phrases: time series decomposition, bootstrap, binary connection number, model selection, PM2.5.
Received: November 6, 2023; Accepted: January 8, 2024; Published: February 12, 2024
How to cite this article: Huali Zhou and Huayou Chen, Selection of prediction models based on possibility function of binary connection numbers, Advances and Applications in Statistics 91(3) (2024), 371-392. http://dx.doi.org/10.17654/0972361724020
This Open Access Article is Licensed under Creative Commons Attribution 4.0 International License
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