• Corpus ID: 7418673

An Efficient Prediction of Breast Cancer Data using Data Mining Techniques

@inproceedings{Kumar2013AnEP,
  title={An Efficient Prediction of Breast Cancer Data using Data Mining Techniques},
  author={G. Ravi Kumar},
  year={2013}
}
Breast cancer is one of the major causes of death in women when compared to all other cancers. Breast cancer has become the most hazardous types of cancer among women in the world. Early detection of breast cancer is essential in reducing life losses. This paper presents a comparison among the different Data mining classifiers on the database of breast cancer Wisconsin Breast Cancer (WBC), by using classification accuracy. This paper aims to establish an accurate classification model for Breast… 

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