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Building Machine Learning Systems with Python

You're reading from   Building Machine Learning Systems with Python Expand your Python knowledge and learn all about machine-learning libraries in this user-friendly manual. ML is the next big breakthrough in technology and this book will give you the head-start you need.

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Product type Paperback
Published in Jul 2013
Publisher Packt
ISBN-13 9781782161400
Length 290 pages
Edition 1st Edition
Languages
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Table of Contents (20) Chapters Close

Building Machine Learning Systems with Python
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
1. Getting Started with Python Machine Learning FREE CHAPTER 2. Learning How to Classify with Real-world Examples 3. Clustering – Finding Related Posts 4. Topic Modeling 5. Classification – Detecting Poor Answers 6. Classification II – Sentiment Analysis 7. Regression – Recommendations 8. Regression – Recommendations Improved 9. Classification III – Music Genre Classification 10. Computer Vision – Pattern Recognition 11. Dimensionality Reduction 12. Big(ger) Data Where to Learn More about Machine Learning Index

Summary


In this chapter, we started by improving our rating predictions from the previous chapter. We saw a couple of different ways in which to do so and then combined them all in a single prediction by learning how to use a set of weights. These techniques, ensemble or stacked learning, are general techniques that can be used in many situations and not just for regression. They allow you to combine different ideas even if their internal mechanics are completely different; you can combine their final outputs.

In the second half of the chapter, we switched gears and looked at another method of recommendation: shopping basket analysis or association rule mining. In this mode, we try to discover (probabilistic) association rules of the customers who bought X are likely to be interested in Y form. This takes advantage of the data that is generated from sales alone without requiring users to numerically rate items. This is not available in scikit-learn (yet), so we wrote our own code (for a change...

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