Journal ArticleUnknown
Exploring the Performances of Stacking Classifier in Predicting Patients Having Stroke
Authors
Author Affiliations
Islamic University of Technology, North South University
Published In2021 8th NAFOSTED Conference on Information and Computer Science (NICS)
Year2021
Citations24
Abstract
Stroke refers to a spectrum of clinical manifestations with underlying neurological dysfunctions of the brain. It is a medical condition which is often misdiagnosed and commonly misclassified, leading to a delay in the initiation of disease-specific treatment in patients. Rapid and precise detection of stroke is the key to the effective management of the patients and alleviate possible disabilities. Machine learning techniques are being adopted for their capabilities of identifying hidden patterns from the obtained data of patients. In this study, a stacking classifier is constructed by utilizing Random Forest (RF), Extra Tree (ET) and Gradient Boosting Classifier (GBC) as well as the performances are observed in terms of various performance metrics. A detailed comparative analysis is portrayed where it…
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