An Overview on Data Mining Approach on Breast Cancer data

This paper gives the current overview of use of data mining techniques on breast cancer data. This paper also gives the study of data mining on medical domain which has already done from researchers. In this paper we use classification data mining techniques on breast cancer data with using data mining software. A huge amount of medical records are stored in databases. Data are produce from different sources and continuously stored in depositories. These databases are more complicated for the point of analysis. Data Mining is a relatively new field of research whose major objective is to acquire knowledge from large amounts of data.

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