Comparison of Machine Learning Methods for Breast Cancer Diagnosis | Python Project | Machine Learning | Artificial Intelligence | Image Processing | IEEE

10,000 5,000

+ -

For more details 7338345250 , skstech.in@gmail.com

Comparison of Machine Learning Methods for Breast Cancer Diagnosis

Abstract:

Cancer is the common problem for all people in the world with all types. Particularly, Breast Cancer is the most frequent disease as a cancer type for women. Therefore, any development for diagnosis and prediction of cancer disease is capital important for a healthy life. Machine learning techniques can make a huge contribute on the process of early diagnosis and prediction of cancer. In this paper, two of the most popular machine learning techniques have been used for classification of Wisconsin Breast Cancer (Original) dataset and the classification performance of these techniques have been compared with each other using the values of accuracy, precision, recall and ROC Area. The best performance has been obtained by Support Vector Machine technique with the highest accuracy.

Technology:

  • Java
  • JDK
  • Machine Learning
  • Artificial Intelligence
  • MySql

Including Packages                         

  • Supporting Softwares
  • Source Code
  • Documentation
  • Presentation Slides
  • System architecture
  • Data Flow Diagram            
  • Screenshots    
  • Execution Procedure
  • Database File

Specialization

  • Video On Demand *
  • Remote Connectivity *
  • Code Customization *
  • Document Customization *
  • Online Support *
  • Voice Conference*
  • Video Tutorials *
  • Readme File

          *Condition Apply

Breast Cancer Diagnosis
Technology

Java

Navigation
Close

My Cart

Close

Wishlist

Recently Viewed

Close

Great to see you here!

A password will be sent to your email address.

Your personal data will be used to support your experience throughout this website, to manage access to your account, and for other purposes described in our privacy policy.

Already got an account?

Close

Categories