Skip to content

This project aims to build a machine learning model using K-Nearest Neighbor, LogisticRegression, RandomForestClassifier to classify whether or not a person has heart disease based upon his medical attributes. (accuracy achieved : 88.52%)

Notifications You must be signed in to change notification settings

vedanty3/heart-disease-prediction

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

4 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

💓 Heart Disease Prediction

A machine learning model able to classify whether or not a person has a heart disease. Heart-Disease-Prediction-using-Machine-Learning Thus preventing Heart diseases has become more than necessary. Good data-driven systems for predicting heart diseases can improve the entire research and prevention process, making sure that more people can live healthy lives. This is where Machine Learning comes into play. Machine Learning helps in predicting the Heart diseases, and the predictions made are quite accurate.

The project involved analysis of the heart disease patient dataset with proper data processing. Then, different models were trained and and predictions are made with different algorithms KNN, Decision Tree, Random Forest,SVM,Logistic Regression etc This is the jupyter notebook code and dataset I've used for my Kaggle kernel 'Binary Classification with Sklearn and Keras'

I've used a variety of Machine Learning algorithms, implemented in Python, to predict the presence of heart disease in a patient. This is a classification problem, with input features as a variety of parameters, and the target variable as a binary variable, predicting whether heart disease is present or not.

Machine Learning algorithms used:

  1. Logistic Regression (Scikit-learn)
  2. Naive Bayes (Scikit-learn)
  3. Support Vector Machine (Linear) (Scikit-learn)
  4. K-Nearest Neighbours (Scikit-learn)
  5. Decision Tree (Scikit-learn)
  6. Random Forest (Scikit-learn)

Accuracy achieved: 86.88% (Random Forest)

Accuracy achieved: 75.41% (KNearestNeighbors)

Accuracy achieved: 88.52% (LogisticRegression)

About

This project aims to build a machine learning model using K-Nearest Neighbor, LogisticRegression, RandomForestClassifier to classify whether or not a person has heart disease based upon his medical attributes. (accuracy achieved : 88.52%)

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published