Clustering of COVID-19 Multi-Time Series-Based K-Means and PCA With Forecasting

Author:

Alaziz Sundus Naji1,Albayati Bakr2,El-Bagoury Abd al-Aziz H.3ORCID,Shafik Wasswa4ORCID

Affiliation:

1. Department of Mathematical Sciences, Faculty of Science, Princess Nourah bint Abdulrahman University, Saudi Arabia

2. Department of Basic Sciences, Common First Year King Saud University, Riyadh, Saudi Arabia

3. Basic Sciences Department, Higher Institute of Engineering and Technology, El-Mahala El-Kobra, Egypt

4. Faculty of Basic Sciences and Information Technology, Ndejje University, Kampala, Uganda

Abstract

The COVID-19 pandemic is one of the current universal threats to humanity. The entire world is cooperating persistently to find some ways to decrease its effect. The time series is one of the basic criteria that play a fundamental part in developing an accurate prediction model for future estimations regarding the expansion of this virus with its infective nature. The authors discuss in this paper the goals of the study, problems, definitions, and previous studies. Also they deal with the theoretical aspect of multi-time series clusters using both the K-means and the time series cluster. In the end, they apply the topics, and ARIMA is used to introduce a prototype to give specific predictions about the impact of the COVID-19 pandemic from 90 to 140 days. The modeling and prediction process is done using the available data set from the Saudi Ministry of Health for Riyadh, Jeddah, Makkah, and Dammam during the previous four months, and the model is evaluated using the Python program. Based on this proposed method, the authors address the conclusions.

Publisher

IGI Global

Subject

Hardware and Architecture,Software

Reference18 articles.

1. A Bayesian extension of the minimum AIC procedure of autoregressive model fitting.;H.Akaike;Biometrika,1979

2. Model-Based Discriminant Analysis and Two-Step Clustering for Breast Cancer patients.;S. N.Al-Aziz;World Applied Sciences Journal,2019

3. Analysis of Clustering Algorithms in Machine Learning for Healthcare Data.;M.Ambigavathi;International Conference on Advances in Computing and Data Sciences,2020

4. Time series analysis of tea prices: An application of ARIMA modelling and cointegration analysis.;M. I.Ansari;The Indian Economic Journal,2001

5. Combining mixture components for clustering.;J. P.Baudry;Journal of Computational and Graphical Statistics,2010

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