• Corpus ID: 26623666

DISEASE PREDICTING SYSTEM USING DATA MINING TECHNIQUES

@inproceedings{Gomathy2013DISEASEPS,
  title={DISEASE PREDICTING SYSTEM USING DATA MINING TECHNIQUES},
  author={B. Gomathy},
  year={2013}
}
The successful application of data mining in highly visible fields like e-business, commerce and trade has led to its application in other industries. [] Key Method The data classification is based on MAFIA algorithms which result in accuracy, the data is estimated using entropy based cross validations and partition techniques and the results are compared. C4.5 algorithm is used as the training algorithm to show rank of heart attack with the decision tree. The heart disease database is clustered using the K…

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