A python class for making machine learning algorithms cost sensitive.
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Updated
Apr 20, 2021
A python class for making machine learning algorithms cost sensitive.
Determine supervised machine learning model that can accurately predict credit risk using python's sklearn library. Python, Pandas, imbalanced-learn, skikit-learn
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