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The Data Science Workshop

You're reading from   The Data Science Workshop A New, Interactive Approach to Learning Data Science

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Product type Paperback
Published in Jan 2020
Publisher
ISBN-13 9781838981266
Length 818 pages
Edition 1st Edition
Languages
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Authors (5):
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Thomas Joseph Thomas Joseph
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Thomas Joseph
Andrew Worsley Andrew Worsley
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Andrew Worsley
Robert Thas John Robert Thas John
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Robert Thas John
Anthony So Anthony So
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Anthony So
Dr. Samuel Asare Dr. Samuel Asare
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Dr. Samuel Asare
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Table of Contents (18) Chapters Close

Preface 1. Introduction to Data Science in Python 2. Regression FREE CHAPTER 3. Binary Classification 4. Multiclass Classification with RandomForest 5. Performing Your First Cluster Analysis 6. How to Assess Performance 7. The Generalization of Machine Learning Models 8. Hyperparameter Tuning 9. Interpreting a Machine Learning Model 10. Analyzing a Dataset 11. Data Preparation 12. Feature Engineering 13. Imbalanced Datasets 14. Dimensionality Reduction 15. Ensemble Learning 16. Machine Learning Pipelines 17. Automated Feature Engineering

What Are Hyperparameters?

Hyperparameters can be thought of as a set of dials and switches for each estimator that change how the estimator works to explain relationships in the data.

Have a look at Figure 8.1:

Figure 8.1: How hyperparameters work

If you read from left to right in the preceding figure, you can see that during the tuning process we change the value of the hyperparameter, which results in a change to the estimator. This in turn causes a change in model performance. Our objective is to find hyperparameterization that leads to the best model performance. This will be the optimal hyperparameterization.

Estimators can have hyperparameters of varying quantities and types, which means that sometimes you can be faced with a very large number of possible hyperparameterizations to choose for an estimator.

For instance, scikit-learn's implementation of the SVM classifier (sklearn.svm.SVC), which you will be introduced to later in the chapter...

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