The present study examines the role of feature selection methods in optimizing machine learning algorithms for predicting heart disease. The Cleveland Heart disease dataset with sixteen feature selection techni
Machine learning algorithms can be used for the prediction of nonnative sound classification based on crosslinguistic acoustic similarity. To date, very few linguistic studies have compared the classification accuracy of different algorithms. This study aims to assess how well machines align with human ...
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Kanwal is a machine learning engineer and technical writer with a passion for AI in medicine. A Google Generation Scholar and FEMCodes founder, she co-authored “Maximizing Productivity with ChatGPT” and champions diversity in STEM. Latest Tutorials ...
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