The Mystery of ADASYN is Revealed

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This research assumes that you are familiar with class imbalance and the ADASYN algorithm. We strongly encourage our readers to review the conference article that launched ADASYN (just type that into Google Scholar or see the References section of this document), and then read any number of articles in Towards Data Science that discuss class imbalance and ADASYN. Because this is neither a guide nor an overview; it is voyage into uncharted waters with startling discoveries. The answers are 1) surprising, 2) fascinating, and 3) extraordinary, in that order. All models in this research were conducted using the RandomForest and LogisticRegression algorithms in the sci-kit learn library to gain information about both tree and linear structures, respectively. All predictive models were 10-fold cross-validated with stratified sampling using "stratify y" in train_test_split and "cv 10" in GridSearchCV.

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