Abstract
The world's leading cause of morbidity and death is cardiovascular diseases (CVD),
which makes early detection essential for successful treatments. This study investigates how
optimization techniques can be used with machine learning (ML) algorithms to forecast
cardiovascular illnesses more accurately. ML models can evaluate enormous datasets by utilizing
data-driven techniques, finding trends and risk factors that conventional methods can miss. In
order to increase prediction accuracy, this study focuses on adopting different machine learning
algorithms, including Decision Trees, Random Forest, Support Vector Machines, and Neural
Networks, that have been tuned using strategies including hyper parameter selection, crossvalidation, and feature selection.