The Effect of Heuristic Methods Toward Performance of Health Data Analysis


Nizam Özoğur H., Orman Z.

in: Next Generation Healthcare Informatics , B. K. Tripathy,Prof. Dr. Pawan Lingras,Assoc. Prof. Arpan Kumar Kar,Assoc. Prof. Chiranji Lal Chowdhary, Editor, Springer, London/Berlin , Singapore, pp.147-171, 2022

  • Publication Type: Book Chapter / Chapter Research Book
  • Publication Date: 2022
  • Publisher: Springer, London/Berlin 
  • City: Singapore
  • Page Numbers: pp.147-171
  • Editors: B. K. Tripathy,Prof. Dr. Pawan Lingras,Assoc. Prof. Arpan Kumar Kar,Assoc. Prof. Chiranji Lal Chowdhary, Editor
  • Istanbul University Affiliated: No

Abstract

Analysis and prediction of health data make essential contributions to the detection, control, and prevention of diseases in the early stages without special examinations. In the analysis of health data, the balance of the datasets, the accuracy and completeness of the data, and the selection of features to represent the disease are very important as they affect the performance of machine learning methods. They have also become popular in various health data analysis studies such as classification of diseases, selection of features to represent the disease, imputation of missing value in dataset since heuristic methods give successful result in the optimization of many problems. In this chapter, various studies that combine heuristic methods and machine learning algorithms for health data analysis between 2010 and 2021 have been examined.