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Data Science Projects with Python

You're reading from   Data Science Projects with Python A case study approach to gaining valuable insights from real data with machine learning

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Product type Paperback
Published in Jul 2021
Publisher Packt
ISBN-13 9781800564480
Length 432 pages
Edition 2nd Edition
Languages
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Author (1):
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Stephen Klosterman Stephen Klosterman
Author Profile Icon Stephen Klosterman
Stephen Klosterman
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Table of Contents (9) Chapters Close

Preface
1. Data Exploration and Cleaning 2. Introduction to Scikit-Learn and Model Evaluation FREE CHAPTER 3. Details of Logistic Regression and Feature Exploration 4. The Bias-Variance Trade-Off 5. Decision Trees and Random Forests 6. Gradient Boosting, XGBoost, and SHAP Values 7. Test Set Analysis, Financial Insights, and Delivery to the Client Appendix

Model Performance on the Test Set

We already have some idea of the out-of-sample performance of the XGBoost model, from the validation set. However, the validation set was used in model fitting, via early stopping. The most rigorous estimate of expected future performance we can make should be created with data that was not used at all for model fitting. This was the reason for reserving a test dataset from the model building process.

You may notice that we did examine the test set to some extent already, for example, in the first chapter when assessing data quality and doing data cleaning. The gold standard for predictive modeling is to set aside a test set at the very beginning of a project and not examine it at all until the model is finished. This is the easiest way to make sure that none of the knowledge from the test set has "leaked" into the training set during model development. When this happens, it opens up the possibility that the test set is no longer a realistic...

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