Enhancing Time Series Forecasting via a Parallel Hybridization of ARIMA and Polynomial Classifiers
Enhancing Time Series Forecasting via a Parallel Hybridization of ARIMA and Polynomial Classifiers
Time series forecasting has attracted significant attention, leading to the de-velopment of a wide range of approaches, from traditional statistical meth-ods to advanced deep learning models. Among them, the Auto-Regressive Integrated Moving Average (ARIMA) model remains a widely adopted linear technique due to its effectiveness in modeling temporal dependencies in economic, industrial, and social data. On the other hand, polynomial classifi-ers offer a robust framework for capturing non-linear relationships and have demonstrated competitive performance in domains such as stock price pre-diction. In this study, we propose a hybrid forecasting approach that inte-grates the ARIMA model with a polynomial classifier to leverage the com-plementary strengths of both models. The hybrid method is evaluated on multiple real-world time series datasets spanning diverse domains. Perfor-mance is assessed based on forecasting accuracy and computational effi-ciency. Experimental results reveal that the proposed hybrid model consist-ently outperforms the individual models in terms of prediction accuracy, al-beit with a modest increase in execution time.
Thanh Son Nguyen、Van Thanh Nguyen、Dang Minh Duc Nguyen
工业经济计算技术、计算机技术
Thanh Son Nguyen,Van Thanh Nguyen,Dang Minh Duc Nguyen.Enhancing Time Series Forecasting via a Parallel Hybridization of ARIMA and Polynomial Classifiers[EB/OL].(2025-05-11)[2025-07-17].https://arxiv.org/abs/2505.06874.点此复制
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