2023
DOI: 10.1186/s12879-023-08467-7
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Use of unsupervised machine learning to characterise HIV predictors in sub-Saharan Africa

Abstract: Introduction Significant regional variations in the HIV epidemic hurt effective common interventions in sub-Saharan Africa. It is crucial to analyze HIV positivity distributions within clusters and assess the homogeneity of countries. We aim at identifying clusters of countries based on socio-behavioural predictors of HIV for screening. Method We used an agglomerative hierarchical, unsupervised machine learning, approach for clustering to analyse d… Show more

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