Heart Disease Prediction Using Random Forest
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Date
2024-06Author
Anurag Kumar, 21SCSE1430008
Roshni Giri, 21SCSE1430030
Tejasvini Arya, 21SCSE1430032
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Heart disease remains a significant global health concern, and early prediction plays a pivotal
role in effective prevention and management. This project leverages machine learning
techniques to develop a heart disease prediction model using a comprehensive dataset
encompassing critical patient attributes. The dataset includes features such as age, sex, chest
pain type, resting blood pressure, cholesterol levels, fasting blood sugar, smoking history etc.
The primary objective is to create a robust predictive model capable of identifying individuals
at risk of heart disease based on these input variables. Random Forest will be explored to
evaluate its effectiveness in predicting heart disease outcomes. The Random Forest algorithm
was selected due to its capability to handle complex, high-dimensional data and provide robust
predictive performance. Our study involves preprocessing the data, handling missing values to
ensure the quality and relevance of attributes. The dataset is then divided into training and
testing sets to evaluate the model's performance
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