Bayessian Clasiffier Supported by Coverage and Acuracy in Breast Cancerdetection


This article shows the importance of Bayesian classifiers for prediction in data mining, also as important components such as coverage and accuracy may improve the classification performance in themselves an analysis by performing a mathematical model such as Naive Bayes can be improved by adding coverage and precision. Finally, we believe that this improvement may be useful in many types of applications, so this application can serve as a support tool for research on breast cancer and as a decision making in the allocation of resources for prevention and treatment, also can also be used in previous applications to be improved in many ways.

  • Abstract
  • Key Words
  • 1. Introduction
  • 2. Bayes' Theorem
  • 3. Naïve Bayes Clasiffier
  • 4. Bayessian Classifier Supported by Coverage and Accuracy
  • 5. Evaluations and Comparations
  • 6. Statistics Evaluations
  • 7. Summaries
  • Acknowledgment
  • References

Related Content

Customize your page view by dragging and repositioning the boxes below.

Related Journal Articles
Related eBook Content
Topic Collections

Sorry! You do not have access to this content. For assistance or to subscribe, please contact us:

  • TELEPHONE: 1-800-843-2763 (Toll-free in the USA)
  • EMAIL: asmedigitalcollection@asme.org
Sign In