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Python for Finance Cookbook – Second Edition

You're reading from   Python for Finance Cookbook – Second Edition Over 80 powerful recipes for effective financial data analysis

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Product type Paperback
Published in Dec 2022
Publisher Packt
ISBN-13 9781803243191
Length 740 pages
Edition 2nd Edition
Languages
Tools
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Author (1):
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Eryk Lewinson Eryk Lewinson
Author Profile Icon Eryk Lewinson
Eryk Lewinson
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Table of Contents (18) Chapters Close

Preface 1. Acquiring Financial Data FREE CHAPTER 2. Data Preprocessing 3. Visualizing Financial Time Series 4. Exploring Financial Time Series Data 5. Technical Analysis and Building Interactive Dashboards 6. Time Series Analysis and Forecasting 7. Machine Learning-Based Approaches to Time Series Forecasting 8. Multi-Factor Models 9. Modeling Volatility with GARCH Class Models 10. Monte Carlo Simulations in Finance 11. Asset Allocation 12. Backtesting Trading Strategies 13. Applied Machine Learning: Identifying Credit Default 14. Advanced Concepts for Machine Learning Projects 15. Deep Learning in Finance 16. Other Books You May Enjoy
17. Index

Exploring feature selection techniques

In the previous recipe, we saw how to evaluate the importance of features used for training ML models. We can use that knowledge to carry out feature selection, that is, keeping only the most relevant features and discarding the rest.

Feature selection is a crucial part of any machine learning project. First, it allows us to remove features that are either completely irrelevant or are not contributing much to a model’s predictive capabilities. This can benefit us in multiple ways. Probably the most important benefit is that such unimportant features can actually negatively impact the performance of our model as they introduce noise and contribute to overfitting. As we have already established—garbage in, garbage out. Additionally, fewer features can often be translated into a shorter training time and help us avoid the curse of dimensionality.

Second, we should follow Occam’s razor and keep our models simple and explainable...

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