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πŸ‘¨β€πŸ’»πŸ‘¨β€πŸ’» A 6-fold cross-validation approach was employed during the model development process. The results indicated that the decision tree algorithm achieved the highest accuracy in predicting heart disease.

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SumanKOLKATA/Heart-Diseases-Identifier-Model-with-GUI

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Heart Diseases Identifier Model with GUI

A 6-fold cross-validation approach was employed during the model development process. The results indicated that the decision tree algorithm achieved the highest accuracy in predicting heart disease.

Model use and accuracy

Logistic Regression Model Accuracy 0.8688524590163934

Logistic Regression Model Accuracy 0.8688524590163934

Accuracy score of Decision Tree model= 0.8032786885245902

Accuracy score of RandomForest model= 0.8360655737704918

Accuracy score of Gradient Boosting Classifier model= 0.8360655737704918

Accuracy of Guassian Naive_bayes 0.8524590163934426

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πŸ‘¨β€πŸ’»πŸ‘¨β€πŸ’» A 6-fold cross-validation approach was employed during the model development process. The results indicated that the decision tree algorithm achieved the highest accuracy in predicting heart disease.

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