• Corpus ID: 16494791

PREDICTION SYSTEM FOR HEART DISEASE USING NAIVE BAYES

@inproceedings{Pattekari2012PREDICTIONSF,
  title={PREDICTION SYSTEM FOR HEART DISEASE USING NAIVE BAYES},
  author={Shadab Adam Pattekari and A.Vajitha Parveen and Enginering Khaja and Banda Nawaz},
  year={2012}
}
The main objective of this research is to develop a n Intelligent System using data mining modeling tec hnique, namely, Naive Bayes. It is implemented as web based application in this user answers the predefined questions. It retrieves hidden data from stored database and compares the user values with trained data set. It can answer com plex queries for diagnosing heart disease and thus assist healthcare practitioners to make intelligent clinical decisio ns which traditional decision support… 

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