A Novel Cluster Detection of COVID-19 Patients and Medical Disease Conditions Using Improved Evolutionary Clustering Algorithm Star
Bryar A. Hassan, Tarik A. Rashid, Hozan K. Hamarashid

TL;DR
This paper introduces an improved evolutionary clustering algorithm, iECA*, which effectively clusters COVID-19 and medical disease data, outperforming existing methods in accuracy, efficiency, and resource consumption.
Contribution
The paper presents iECA*, an enhanced evolutionary clustering algorithm with novel features like the elbow method and data preprocessing, tailored for medical datasets including COVID-19.
Findings
iECA* outperforms other algorithms in clustering accuracy.
iECA* has lower execution time and memory usage.
iECA* achieves the best performance across all tested datasets.
Abstract
With the increasing number of samples, the manual clustering of COVID-19 and medical disease data samples becomes time-consuming and requires highly skilled labour. Recently, several algorithms have been used for clustering medical datasets deterministically; however, these definitions have not been effective in grouping and analysing medical diseases. The use of evolutionary clustering algorithms may help to effectively cluster these diseases. On this presumption, we improved the current evolutionary clustering algorithm star (ECA*), called iECA*, in three manners: (i) utilising the elbow method to find the correct number of clusters; (ii) cleaning and processing data as part of iECA* to apply it to multivariate and domain-theory datasets; (iii) using iECA* for real-world applications in clustering COVID-19 and medical disease datasets. Experiments were conducted to examine the…
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