Ambrews et al., 2022 - Google Patents
Ensemble based machine learning model for heart disease predictionAmbrews et al., 2022
- Document ID
- 17326314167523010427
- Author
- Ambrews A
- Moung E
- Farzamnia A
- Yahya F
- Omatu S
- Angeline L
- Publication year
- Publication venue
- 2022 International conference on communications, information, electronic and energy systems (CIEES)
External Links
Snippet
The World Health Organization reports that more than 10 million people worldwide die each year due to heart disease. In this project, an ensemble-based machine learning (ML) model is proposed for the prediction of heart disease. The proposed method was evaluated on two …
- 201000010238 heart disease 0 title abstract description 55
Classifications
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