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Nam, Y. J., & Shin, W. J. (2019). A Study on Comparison of Lung Cancer Prediction Using Ensemble Machine Learning. Korean Journal of Artificial Intelligence, 7(2), 19-24.
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Yoo, S. H., Park, I. S., & Kim, Y. M. (2017). A Study on the Influence Factors and Reasons of Unmet Dental Treatment in Adults Using Decision Tree. Journal of Health and social studies, 37(4), 293-294.
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