2024
DOI: 10.30598/barekengvol18iss2pp1053-1066
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Optimizing Heart Attack Diagnosis Using Random Forest With Bat Algorithm and Greedy Crossover Technique

Safrizal Ardana Ardiyansa,
Natasha Clarissa Maharani,
Syaiful Anam
et al.

Abstract: Cardiovascular disease stands as one of the primary contributors to global mortality, with the World Health Organization (WHO) reporting approximately 17.9 million deaths annually. Swift and accurate diagnosis of heart attacks is crucial to ensure timely and specialized intervention for patients afflicted by this ailment. A machine learning algorithm that can be employed for addressing such issues is the Random Forest algorithm. However, the efficacy of the model is significantly influenced by the features sel… Show more

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