Corpus ID: 44790121

A SURVEY OF MACHINE LEARNING TECHNIQUES APPLIED FOR BREAST CANCER PREDICTION

@inproceedings{Uddaraju2017ASO,
  title={A SURVEY OF MACHINE LEARNING TECHNIQUES APPLIED FOR BREAST CANCER PREDICTION},
  author={Susmitha Uddaraju and M. R. Narasingarao},
  year={2017}
}
In this paper, A survey of the literature of the past five years involving Machine Learning (ML) algorithms applied to Breast Cancer disease diagnosis is performed. In order for future breast cancer diagnosis to overcome the current limitations and address the issues of breast cancer diagnosis, it is clear that more intelligence need to be deployed in a system, so that an intelligent system can be developed to diagnose the disease with accuracy. This paper focuses on the learning perspectives… Expand
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