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Network Science with Python

You're reading from   Network Science with Python Explore the networks around us using network science, social network analysis, and machine learning

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Product type Paperback
Published in Feb 2023
Publisher Packt
ISBN-13 9781801073691
Length 414 pages
Edition 1st Edition
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Author (1):
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David Knickerbocker David Knickerbocker
Author Profile Icon David Knickerbocker
David Knickerbocker
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Table of Contents (17) Chapters Close

Preface 1. Part 1: Getting Started with Natural Language Processing and Networks
2. Chapter 1: Introducing Natural Language Processing FREE CHAPTER 3. Chapter 2: Network Analysis 4. Chapter 3: Useful Python Libraries 5. Part 2: Graph Construction and Cleanup
6. Chapter 4: NLP and Network Synergy 7. Chapter 5: Even Easier Scraping! 8. Chapter 6: Graph Construction and Cleaning 9. Part 3: Network Science and Social Network Analysis
10. Chapter 7: Whole Network Analysis 11. Chapter 8: Egocentric Network Analysis 12. Chapter 9: Community Detection 13. Chapter 10: Supervised Machine Learning on Network Data 14. Chapter 11: Unsupervised Machine Learning on Network Data 15. Index 16. Other Books You May Enjoy

Using embeddings in supervised ML

Alright! We’ve made it through some really fun hands-on work involving network construction, community detection, and both unsupervised and supervised ML; done some egocentric network visualization; and inspected the results of the use of different embeddings. This chapter really brought everything together. I hope you enjoyed the hands-on work as much as I did, and I hope you found it useful and informative. Before concluding this chapter, I want to go over the pros and cons of using embeddings the way that we have.

Please also keep in mind that there are many other classification models we could have tested with, not just Random Forest. You can use these embeddings in a neural network if you want, or you could test them with logistic regression. Use what you learned here and go have as much fun as possible while learning.

Pros and cons

Let’s discuss the pros and cons of using these embeddings. First, let’s start with...

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