Study of Hellinger Distance as a splitting metric for Random Forests in balanced and imbalanced classification datasets

Study of Hellinger Distance as a splitting metric for Random Forests in balanced and imbalanced classification datasets

Aler, R.
expert systems with applications 2020 Vol. 149 pp. 0-0
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aler2020studyexpert

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