Health Care Card System
Keywords:
Supervised algorithms, Convolutional Neural Network (CNN), Artificial Neural Network (ANN), K-Nearest Neighbor (KNN), Navies Bayesian (NB), Random Forest (RF).Abstract
Disease Prediction using supervised machine learning algorithms has shown a potential growth in the past few years. The proposed system is based on a predictive model that predicts the disease of the user based on the symptoms provided. The system analyses these symptoms and gives the probability of the disease as an output. Along with disease prediction, the system also calculates the severity of the disease and suggests remedies like diet plans and exercises. Looking at the current growth of supervised algorithms in Health Risk Assessment (HRA) and the extensive research done, the system uses CNN algorithm to achieve its results.
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