Constrained Recurrent Cubic Fractal Framework and Forecasting Based on Decision Tree Regression
DOI :
https://doi.org/10.5269/bspm.83005Résumé
In this paper, we propose a Constrained Recurrent Cubic Fractal Model that integrates the Recurrent Iterated Function System with a constrained piecewise linear function to model complex datasets and establish its convergence analysis effectively. The proposed model employs rational cubic and quadratic forms to ensure precise interpolation. To validate its effectiveness, we apply the model to real-world datasets, including stock data analyzed using decision tree regression. The integration of decision tree regression further enhances predictive performance, enabling accurate interpolation of existing data points and reliable forecasting of future values. Numerical experiments confirm that the model produces smooth and accurate interpolations, preserves underlying trends, and delivers consistent predictions across diverse datasets.
This study represents a significant advancement in recurrent fractal-based modeling methodologies for data analysis and forecasting.
Téléchargements
Publié
Numéro
Rubrique
Licence
© Boletim da Sociedade Paranaense de Matemática 2026

Cette œuvre est sous licence Creative Commons Attribution 4.0 International.
When the manuscript is accepted for publication, the authors agree automatically to transfer the copyright to the (SPM).
The journal utilize the Creative Common Attribution (CC-BY 4.0).



