Early Stroke Disease Prediction Based on Lifestyle Factors Applied with Machine Learning
Dublin Core
Title
Early Stroke Disease Prediction Based on Lifestyle Factors Applied with Machine Learning
Subject
lifestyle; machine learning; preprocessing; stroke; variable reduction
Description
Stroke prediction has many supporting features and variables. Some forecasts focus more on health or elements that are already present. Predicting stroke risk by identifying habitual factors provides more advantages for preventive action. In addition, the complexity of features or variables is a concern in predicting stroke risk. In this study, we used a public dataset from Kaggle with 10 features or variables. In this study, we propose to collaborate algorithms and preprocessing in feature selection using Pearson Correlation and Principal Component Analysis (PCA) dimension reduction to unravel the complexity of variables and data processing computing. This aims to predict stroke risk more simply. The results of the experiment show that feature selection using Pearson Correlation between features and labels produces maximum results using 5 features out of 10 provided features. This approach produces the best performance on the Naïve Bayes, Iterative Dichotomiser Tree (ID3), Support Vector Machine (SVM), K-Nearest Neighbor (KNN), and Logistic Regression with 100% accuracy and reduces features by 50% to support the reduction of the complexity of prediction variables and data processing computing
Creator
Suastika Yulia Riska1, Lia Farokhah
Source
https://jurnal.iaii.or.id/index.php/RESTI/article/view/6495/1152
Publisher
2Informatic Departement, Technology and Desain Faculty, Institut Teknologi dan Bisnis Asia, Malang, IndonesiA
Date
October 25, 2025
Contributor
FAJAR BAGUS W
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Suastika Yulia Riska1, Lia Farokhah, “Early Stroke Disease Prediction Based on Lifestyle Factors Applied with Machine Learning,” Repository Horizon University Indonesia, accessed February 9, 2026, https://repository.horizon.ac.id/items/show/10592.