• Corpus ID: 2878318

Application of Data Mining Methods and Techniques for Diabetes Diagnosis

@inproceedings{Rajesh2012ApplicationOD,
  title={Application of Data Mining Methods and Techniques for Diabetes Diagnosis},
  author={K. V. N. Rajesh and Viswanathan Sangeetha},
  year={2012}
}
Medical professionals need a reliable prediction methodology to diagnose Diabetes. Data mining is the process of analysing data from different perspectives and summarizing it into useful information. The main goal of data mining is to discover new patterns for the users and to interpret the data patterns to provide meaningful and useful information for the users. Data mining is applied to find useful patterns to help in the important tasks of medical diagnosis and treatment. This project aims… 

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