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IJSTR >> Volume 9 - Issue 4, April 2020 Edition

International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616

A Study On Prediction Of Health Care Data Using Machine Learning

[Full Text]



M. Balamurugan, AVN Krishna, K. Balachandran, J. Bhuvana



Classification, Health care, clustering, Data mining, Electronic-Health Record(HER), Health informatics, Machine Learning.



Every clinical-decision relies on the doctor’s experience and knowledge. Perhaps this conventional practice may look appropriate, but it may lead to unpredictable errors, biases, and maximized costs that may affect QoS (Quality-of-Service) given to patients. To help the doctor to save time, the conventional practice to analyze the data for clinical-decision support has to be updated. Machine Learning (ML) and Data Mining (DM) algorithms have applied to have greater and higher predictions. This paper studies a set of ML algorithms by which clinical-predictions are going to be more appropriate and cost-effective.



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