GET THE APP

..

Journal of Health & Medical Informatics

ISSN: 2157-7420

Open Access

Adebayo Felix Adekoya

Department of Computer Science and Informatics, University of Energy and Natural Resources, Sunyani, Ghana

Publications
  • Research Article   
    Performance Analysis of Data Mining Algorithms: Breast Cancer Predictive Models
    Author(s): Appiah Stephen* and Adebayo Felix Adekoya

    One out of eight women over their lifetime will be diagnosed of breast cancer and it is recorded to be the world major cause of women’s deaths. Data mining methods are an effective way to classify data, especially in medical field, where those methods are widely used in diagnosis and analysis to make decisions. In this study, a performance comparison between five different data mining technique: Random forest, random tree, Bayes net, Naïve Bayes and J48 on the breast cancer Wisconsin (Diagnostic) data set is conducted. It is aimed to assess the correctness in classifying data with respect to efficiency and effectiveness of each algorithm in terms of accuracy, precision, sensitivity/recall and specificity. Experimental outcome indicates that Bayes net and random forest gives the highest weighted average accuracy of 97.1% with lowest type I and II error rate.. Read More»
    DOI: 10.37421/2157-7420.2022.13.426

    Abstract HTML PDF

Google Scholar citation report
Citations: 2128

Journal of Health & Medical Informatics received 2128 citations as per Google Scholar report

Journal of Health & Medical Informatics peer review process verified at publons

Indexed In

 
arrow_upward arrow_upward