HEART DISEASE PREDICTION USING RANDOM FOREST CLASSIFIER

Authors

  • N. Manasvi, P. Sreekala, S. Aishwarya, Anil Jawalkar Author

DOI:

https://doi.org/10.48047/

Keywords:

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Abstract

In the medical field, the diagnosis of heart disease is the most difficult task. The diagnosis of heart disease is difficult as a decision relied on grouping of large clinical and pathological data. Due to this complication, the interest increased in a significant amount between the researchers and clinical professionals about the efficient and accurate heart disease prediction. In case of heart disease, the correct diagnosis in early stage is important as time is the especially important factor. Heart disease is the principal source of deaths widespread, and the prediction of heart disease is significant at an untimely phase. Machine learning in recent years has been the evolving, reliable, and supporting tools in medical domain and has provided the greatest support for predicting disease with correct case of training and testing.

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Published

2025-06-13