Smoothing Techniques for Improving COVID-19 Time Series Forecasting Across Countries

Author:

Zbezhkhovska Uliana1ORCID,Chumachenko Dmytro2345ORCID

Affiliation:

1. Scientific and Methodical Department for Quality Assurance of Educational Activities and Higher Education, Ivan Kozhedub Kharkiv National Air Force University, 61023 Kharkiv, Ukraine

2. Mathematical Modelling and Artificial Intelligence Department, National Aerospace University “Kharkiv Aviation Institute”, 61072 Kharkiv, Ukraine

3. Computer Science and Artificial Intelligence Lab, Massachusetts Institute of Technology, Cambridge, MA 02139, USA

4. Ubiquitous Health Technology Lab, University of Waterloo, Waterloo, ON N2L 2G5, Canada

5. Balsillie School of International Affairs, Waterloo, ON N2L 6C2, Canada

Abstract

Accurate forecasting of COVID-19 case numbers is critical for timely and effective public health interventions. However, epidemiological data’s irregular and noisy nature often undermines the predictive performance. This study examines the influence of four smoothing techniques—the rolling mean, the exponentially weighted moving average, a Kalman filter, and seasonal–trend decomposition using Loess (STL)—on the forecasting accuracy of four models: LSTM, the Temporal Fusion Transformer (TFT), XGBoost, and LightGBM. Weekly case data from Ukraine, Bulgaria, Slovenia, and Greece were used to assess the models’ performance over short- (3-month) and medium-term (6-month) horizons. The results demonstrate that smoothing enhanced the models’ stability, particularly for neural architectures, and the model selection emerged as the primary driver of predictive accuracy. The LSTM and TFT models, when paired with STL or the rolling mean, outperformed the others in their short-term forecasts, while XGBoost exhibited greater robustness over longer horizons in selected countries. An ANOVA confirmed the statistically significant influence of the model type on the MAPE (p = 0.008), whereas the smoothing method alone showed no significant effect. These findings offer practical guidance for designing context-specific forecasting pipelines adapted to epidemic dynamics and variations in data quality.

Funder

National Research Foundation of Ukraine

Publisher

MDPI AG

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