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Table Of Contents
Applied Supervised Learning with R
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Learning Objectives
By the end of this chapter, you will be able to:
Define binary classification in supervised machine learning
Perform binary classification using white-box models: logistic regression and decision trees
Evaluate the performance of supervised classification models
Perform binary classification using black-box ensemble models – Random Forest and XGBoost
Design and develop deep neural networks for classification
Select the best model for a given classification use case
In this chapter, we will focus on solving classification use cases for supervised learning. We will use a dataset designed for a classification use case, frame a business problem around it, and explore a few popular techniques to solve the problem.
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