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Graph Machine Learning

You're reading from   Graph Machine Learning Learn about the latest advancements in graph data to build robust machine learning models

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Product type Paperback
Published in Jul 2025
Publisher Packt
ISBN-13 9781803248066
Length 434 pages
Edition 2nd Edition
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Authors (3):
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Aldo Marzullo Aldo Marzullo
Author Profile Icon Aldo Marzullo
Aldo Marzullo
Enrico Deusebio Enrico Deusebio
Author Profile Icon Enrico Deusebio
Enrico Deusebio
Claudio Stamile Claudio Stamile
Author Profile Icon Claudio Stamile
Claudio Stamile
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Toc

Table of Contents (20) Chapters Close

Preface 1. Part 1: Introduction to Graph Machine Learning
2. Getting Started with Graphs FREE CHAPTER 3. Graph Machine Learning 4. Neural Networks and Graphs 5. Part 2: Machine Learning on Graphs
6. Unsupervised Graph Learning 7. Supervised Graph Learning 8. Solving Common Graph-Based Machine Learning Problems 9. Part 3: Practical Applications of Graph Machine Learning
10. Social Network Graphs 11. Text Analytics and Natural Language Processing Using Graphs 12. Graph Analysis for Credit Card Transactions 13. Building a Data-Driven Graph-Powered Application 14. Part 4: Advanced topics in Graph Machine Learning
15. Temporal Graph Machine Learning 16. GraphML and LLMs 17. Novel Trends on Graphs 18. Index
19. Other Books You May Enjoy

Summary

In this chapter, you have learned how to process unstructured information and how to represent such information by means of a graph. Starting from a well-known benchmark dataset, Reuters-21578, we applied standard NLP engines to tag and structure textual information. These high-level features were then used to create different types of networks: knowledge base networks, bipartite networks, projections of bipartite networks onto each subset of node types, and a topic-topic similarity network. The different graphs also allowed us to use the tools we have presented in previous chapters to extract insights from the network representation.

We used local and global properties in order to show you how these quantities can represent and describe structurally different types of networks. Unsupervised techniques were then used in order to identify semantic communities and cluster together documents belonging to similar subjects/topics. Finally, we used the labeled information provided...

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