In this module, we will cover methods for selecting a model, introduce the simplicity-accuracy balance, and then demonstrate strategies for model evaluation and performance improvement for the best possible application. We will also cover how to know your model is working in application.
Model Building and Evaluation for Reduction of Errors in Application
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