2021
DOI: 10.18201/ijisae.2021473633
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ImbTree: Minority Class Sensitive Weighted Decision Tree for Classification of Unbalanced Data

Abstract: A reliable and precise tool for medical machine learning is in demand. The diagnosis datasets are mostly unbalanced. To propose an accurate prediction tool for medical data we need an accurate machine-learning algorithm for unbalanced data classification. In binary class unbalanced medical dataset, accurate prediction of the minority class is important. Traditional classifiers designed to improve accuracy by giving more weight to the majority class. Existing techniques gives good results by accurately classify… Show more

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