Publication: Assessing Statistical Methods for Generating Forecasts for COVID-19
DOI
Type:
Article
Date
2024-06-09
Journal Title
Journal ISSN
Volume Title
Publisher
Faculty of Humanities and Sciences, SLIIT
Abstract
The COVID-19 pandemic, a persistent global health emergency that has affected almost all facets of
daily life, was initially discovered in Wuhan, China, in December 2019. Since that time, the virus has
rapidly spread over the globe, causing serious social and economic upheavals necessitating the need for
reliable forecasting methods. This study compares ten distinct models to predict the number of confirmed
COVID-19 cases in Sri Lanka, aiming to assess the performance of statistical models using limited and
volatile real-world data characterized by trends, random peaks, and autocorrelations. In addition to the
classical ARIMA model, various smoothing and filtering techniques were explored to capture the unique
characteristics of the data. The model consistencies in multiple-day predictions were demonstrated, and
robust evaluation criteria, along with non-robust measures, were utilized to enhance the effectiveness
of the evaluation process. The results highlight the effectiveness of traditional smoothing and filtering
strategies such as Simple Exponential Smoothing, Holt’s Exponential Smoothing, and the Smoothing
Splines technique coupled with the ARIMA model. This study also discovered that the ARIMA model,
when applied directly to the original data without using any smoothing or filtering approaches, failed to
forecast adequately, thereby demonstrating the insufficiency of the ARIMA model on its own to provide
credible forecasts when given a volatile set of data.
Description
Keywords
Arima, Smoothing, Time series, Trend analysis
