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Hands-On Data Analysis with Pandas

You're reading from   Hands-On Data Analysis with Pandas Efficiently perform data collection, wrangling, analysis, and visualization using Python

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Product type Paperback
Published in Jul 2019
Publisher
ISBN-13 9781789615326
Length 740 pages
Edition 1st Edition
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Author (1):
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Stefanie Molin Stefanie Molin
Author Profile Icon Stefanie Molin
Stefanie Molin
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Table of Contents (21) Chapters Close

Preface 1. Section 1: Getting Started with Pandas FREE CHAPTER
2. Introduction to Data Analysis 3. Working with Pandas DataFrames 4. Section 2: Using Pandas for Data Analysis
5. Data Wrangling with Pandas 6. Aggregating Pandas DataFrames 7. Visualizing Data with Pandas and Matplotlib 8. Plotting with Seaborn and Customization Techniques 9. Section 3: Applications - Real-World Analyses Using Pandas
10. Financial Analysis - Bitcoin and the Stock Market 11. Rule-Based Anomaly Detection 12. Section 4: Introduction to Machine Learning with Scikit-Learn
13. Getting Started with Machine Learning in Python 14. Making Better Predictions - Optimizing Models 15. Machine Learning Anomaly Detection 16. Section 5: Additional Resources
17. The Road Ahead 18. Solutions
19. Other Books You May Enjoy Appendix

Summary

In this chapter, we reviewed various techniques we can employ to improve the performance of our models. We learned how to use grid search to find the best hyperparameters in a search space, and how to tune our model using the scoring metric of our choosing with GridSearchCV. This means we don't have to accept the default in the score() method of our model and can customize it to our needs.

In our discussion of feature engineering, we learned how to reduce the dimensionality of our data using techniques such as PCA and feature selection. We saw how to use PolynomialFeatures to add interaction terms to models with categorical and numerical features. Next, we learned how to use a FeatureUnion to augment our training data with transformed features. In addition, we saw how decision trees can help us understand which features in the data contribute most to the classification...

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