Journal of Future Artificial Intelligence and Technologies
Vol. 1 No. 3 (2024): December 2024

Hypertension Detection via Tree-Based Stack Ensemble with SMOTE-Tomek Data Balance and XGBoost Meta-Learner

Odiakaose, Christopher Chukwufunaya (Unknown)
Aghware, Fidelis Obukohwo (Unknown)
Okpor, Margaret Dumebi (Unknown)
Eboka, Andrew Okonji (Unknown)
Binitie, Amaka Patience (Unknown)
Ojugo, Arnold Adimabua (Unknown)
Setiadi, De Rosal Ignatius Moses (Unknown)
Ibor, Ayei Egu (Unknown)
Ako, Rita Erhovwo (Unknown)
Geteloma, Victor Ochuko (Unknown)
Ugbotu, Eferhire Valentine (Unknown)
Aghaunor, Tabitha Chukwudi (Unknown)



Article Info

Publish Date
01 Dec 2024

Abstract

High blood pressure (or hypertension) is a causative disorder to a plethora of other ailments – as it succinctly masks other ailments, making them difficult to diagnose and manage with a targeted treatment plan effectively. While some patients living with elevated high blood pressure can effectively manage their condition via adjusted lifestyle and monitoring with follow-up treatments, Others in self-denial leads to unreported instances, mishandled cases, and in now rampant cases – result in death. Even with the usage of machine learning schemes in medicine, two (2) significant issues abound, namely: (a) utilization of dataset in the construction of the model, which often yields non-perfect scores, and (b) the exploration of complex deep learning models have yielded improved accuracy, which often requires large dataset. To curb these issues, our study explores the tree-based stacking ensemble with Decision tree, Adaptive Boosting, and Random Forest (base learners) while we explore the XGBoost as a meta-learner. With the Kaggle dataset as retrieved, our stacking ensemble yields a prediction accuracy of 1.00 and an F1-score of 1.00 that effectively correctly classified all instances of the test dataset.

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Journal Info

Abbrev

FAITH

Publisher

Subject

Computer Science & IT

Description

Journal of Future Artificial Intelligence and Technologies E-ISSN: 3048-3719 is an international journal that delves into the comprehensive spectrum of artificial intelligence, focusing on its foundations, advanced theories, and applications. All accepted articles will be published online, receive a ...