Comparison of Traditional and Hybrid Time Series Models for Forecasting COVID-19 Cases
Samyak Prajapati, Aman Swaraj, Ronak Lalwani, Akhil Narwal, Karan, Verma

TL;DR
This study compares traditional and hybrid time series models for COVID-19 case forecasting, finding that the ARIMA-NARNN hybrid outperforms other models in accuracy by effectively capturing linear and non-linear patterns.
Contribution
It introduces and evaluates a hybrid ARIMA-NARNN model for COVID-19 case prediction, demonstrating its superior accuracy over existing models.
Findings
ARIMA-NARNN achieved 35.3% lower RMSE than ARIMA.
Hybrid model outperformed Prophet, Holt-Winters, LSTM, and ARIMA.
Hybrid approach effectively captures complex epidemic data patterns.
Abstract
Time series forecasting methods play critical role in estimating the spread of an epidemic. The coronavirus outbreak of December 2019 has already infected millions all over the world and continues to spread on. Just when the curve of the outbreak had started to flatten, many countries have again started to witness a rise in cases which is now being referred as the 2nd wave of the pandemic. A thorough analysis of time-series forecasting models is therefore required to equip state authorities and health officials with immediate strategies for future times. This aims of the study are three-fold: (a) To model the overall trend of the spread; (b) To generate a short-term forecast of 10 days in countries with the highest incidence of confirmed cases (USA, India and Brazil); (c) To quantitatively determine the algorithm that is best suited for precise modelling of the linear and non-linear…
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Taxonomy
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
