Enron fraud detect classifier using Decision tree algorithm
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Updated
Dec 8, 2017 - Python
Enron fraud detect classifier using Decision tree algorithm
This contains my implementation of the Decision Tree Classifier. It uses only one hyperparamter - max_depth - to tune the model. I am looking to add more implementations of Machine Learning algorithms here.
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