Title of article :
Early diagnosis of stroke disorder using homogenous logistic regression ensemble classifier
Author/Authors :
Anisha, C.D Department of CSE - PSG College of Technology - Coimbatore, India , Saranya, K.G Department of CSE - PSG College of Technology - Coimbatore, India
Abstract :
A stroke occurs in the scenario wherein the blood supply to the brain is blocked, leading to a
lack of oxygen to the blood. There is a need for the early diagnosis of the stroke to handle the
emergency situations of stroke in an efficient manner. Integration of Artificial Intelligence (AI) in
the early diagnosis of stroke provides efficiency and flexibility. Artificial Intelligence (AI), which is a
mimic of human intelligence has a wide range of applications from small scale systems to high-end
enterprise systems. Artificial Intelligence has emerged as an efficient and accurate decision-making
system in healthcare systems. Machine Learning (ML) is a subset of Artificial Intelligence (AI).
The incorporation of machine learning techniques in stroke diagnosis systems provides faster and
precise decisions. The proposed system aims to develop an early diagnosis of stroke disorder using a
homogenous logistic regression ensemble classifier. Logistic regression is a linear algorithm that uses
maximum likelihood methodology for predictions and a standard machine learning model for twoclass
problems. The prediction is improved by accumulating the predictions of two or more logistic
regression using a bagging ensemble classifier thereby increasing the accuracy of the stroke diagnosis
system. The accumulation of prediction of two or more same models is known as a homogenous
ensemble classifier. The results obtained show that the proposed homogenous logistic regression
ensemble model has higher accuracy than single logistic regression.
Keywords :
Index Terms—Stroke , machine learning , logistic regression , Homogenous logistic regression Ensemble classifier
Journal title :
International Journal of Nonlinear Analysis and Applications