학술논문

An Empirical Evaluation of Ensemble Machine Learning Techniques for Chronic Kidney Disease Prophecy
Document Type
Conference
Source
2024 1st International Conference on Cognitive, Green and Ubiquitous Computing (IC-CGU) Cognitive, Green and Ubiquitous Computing (IC-CGU), 2024 1st International Conference on. :1-7 Mar, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Support vector machines
Machine learning algorithms
Medical services
Prediction algorithms
Ubiquitous computing
Chronic kidney disease
Classification algorithms
Machine Learning
Vaticination
Classification
Ensemble
SVM
Language
Abstract
The most intriguing task in life is vaticination in the medical field. Generally, Chronic Kidney Disease (CKD) is defined by a patient's urine abnormalities, structural abnormalities, or bloodied excretory, level of waste products. This detection can be achieved by applying Machine Learning algorithms like Random Forest, Decision Tree, KNN, and SVM on patient information to predict the occurrence of chronic kidney disease. This research focuses on the detection of kidney disease using a combination of multiple algorithms to improve accuracy and reliability. The dataset containing clinical features related to kidney diseases is preprocessed, and various machine-learning processes are applied individually. To enhance classification performance, an ensemble technique is employed, combining the predictions of these algorithms using voting or weighted averaging. The machine learning algorithms provide better operation of the clinical data and accurate vaticination of the habitual order complaints.