Omoha, Joy Omeyi and Omole, Omotayo Omodele and Abifade, Victor Oluwatobi and Audi, Najib Isyaku (2024) Assessment of Agglomerative Clustering Techniques On Grouping of Malaria Infected Patients in Kaduna State, Nigeria. International Journal of Quantitative and Qualitative Research Methods, 12 (2). pp. 44-57. ISSN 2056-3620(Print), 2056-3639(Online)
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Abstract
This study was carried out on assessment of agglomerative clustering techniques on grouping of malaria infected patients in kaduna state. The objective of this paper was to apply Agglomerative Hierarchical clustering techniques to group the variables, such that those similar to malaria infection will be identified. Reported cases of data relating to malaria cases were obtained on 1107 patients. Single linkage grouped sex and marital status at an early stage and joined by occupation at a farther distance which formed cluster I, while location and age joined at the same distance level to form cluster II. Complete Linkage grouped sex and marital status at a lower similarity which was later joined by occupation at a slightly higher distance to form cluster I. Average linkage, median. Centroid and ward’s method also have sex grouped to marital status and joined closely by occupation to form cluster I. While age grouped with location to form cluster II. The location shows high similarity in all the method used which could be due to the swampy nature of the patient’s environment. This paper concludes that the use of agglomerative clustering provides a suitable tool for assessing the diseases. It was recommended that the public health practitioners, policy makers, religious leaders and other stakeholders should use hierarchical clustering to develop strategies as a tool for disease control.
Item Type: | Article |
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Subjects: | H Social Sciences > H Social Sciences (General) |
Depositing User: | Professor Mark T. Owen |
Date Deposited: | 20 Jun 2024 15:33 |
Last Modified: | 20 Jun 2024 15:33 |
URI: | https://tudr.org/id/eprint/3131 |