Comparative Analysis of Machine Learning Approaches to Analyze and Predict the Covid-19 Outbreak
Muhammad Naeem, Jian Yu, Muhammad Aamir, Sajjad Ahmad Khan, Olayinka, Adeleye, Zardad Khan

TL;DR
This paper compares various machine learning models like SVM, Random Forest, KNN, and Neural Networks for predicting COVID-19 outbreaks, demonstrating their high accuracy and usefulness in short-term epidemic forecasting.
Contribution
It provides a comparative analysis of ML approaches for COVID-19 prediction using ARDL-based feature selection, highlighting their effectiveness in epidemic trend forecasting.
Findings
MAPE for best models: 0.407, 0.094, 0.124
Models accurately forecast 15-day ahead cases
ML algorithms support decision making in epidemic control
Abstract
Background. Forecasting the time of forthcoming pandemic reduces the impact of diseases by taking precautionary steps such as public health messaging and raising the consciousness of doctors. With the continuous and rapid increase in the cumulative incidence of COVID-19, statistical and outbreak prediction models including various machine learning (ML) models are being used by the research community to track and predict the trend of the epidemic, and also in developing appropriate strategies to combat and manage its spread. Methods. In this paper, we present a comparative analysis of various ML approaches including Support Vector Machine, Random Forest, K-Nearest Neighbor and Artificial Neural Network in predicting the COVID-19 outbreak in the epidemiological domain. We first apply the autoregressive distributed lag (ARDL) method to identify and model the short and long-run…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · COVID-19 epidemiological studies · Anomaly Detection Techniques and Applications
