• Corpus ID: 15243901

Heart Disease Prediction Using Classification with Different Decision Tree Techniques

  title={Heart Disease Prediction Using Classification with Different Decision Tree Techniques},
  author={Karuppusamy Thenmozhi},
Data mining is one of the essential areas of research that is more popular in health organization. Data mining plays an effective role for uncovering new trends in healthcare organization which is helpful for all the parties associated with this field. Heart disease is the leading cause of death in the world over the past 10 years. Heart disease is a term that assigns to a large number of medical conditions related to heart. These medical conditions describe the irregular health condition that… 

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  • M. UmamaheswariP. Devi
  • Computer Science
    2017 IEEE International Conference on Intelligent Techniques in Control, Optimization and Signal Processing (INCOS)
  • 2017
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