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Applied Deep Learning on Graphs

You're reading from   Applied Deep Learning on Graphs Leveraging Graph Data to Generate Impact Using Specialized Deep Learning Architectures

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Product type Paperback
Published in Dec 2024
Publisher Packt
ISBN-13 9781835885963
Length
Edition 1st Edition
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Authors (2):
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Lakshya Khandelwal Lakshya Khandelwal
Author Profile Icon Lakshya Khandelwal
Lakshya Khandelwal
Subhajoy Das Subhajoy Das
Author Profile Icon Subhajoy Das
Subhajoy Das
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Toc

Table of Contents (19) Chapters Close

Preface 1. Part 1: Foundations of Graph Learning FREE CHAPTER
2. Chapter 1: Introduction to Graph Learning 3. Chapter 2: Graph Learning in the Real World 4. Chapter 3: Graph Representation Learning 5. Part 2: Advanced Graph Learning Techniques
6. Chapter 4: Deep Learning Models for Graphs 7. Chapter 5: Graph Deep Learning Challenges 8. Chapter 6: Harnessing Large Language Models for Graph Learning 9. Part 3: Practical Applications and Implementation
10. Chapter 7: Graph Deep Learning in Practice 11. Chapter 8: Graph Deep Learning for Natural Language Processing 12. Chapter 9: Building Recommendation Systems Using Graph Deep Learning 13. Chapter 10: Graph Deep Learning for Computer Vision 14. Part 4: Future Directions
15. Chapter 11: Emerging Applications 16. Chapter 12: The Future of Graph Learning 17. Index 18. Other Books You May Enjoy

Summary

In this chapter, we covered the practical applications of graph deep learning in social network analysis using PyG. We focused on a hypothetical dataset representing a university student social network, demonstrating how graph-based machine learning can be applied to real-world scenarios.

Together, we achieved two main tasks: node classification for predicting user interests and link prediction for recommending new connections. By following step-by-step instructions, you learned how to create a synthetic dataset, implement GCNs for node classification, and use GAEs for link prediction. We broke down our code into snippets in relation to data preparation, model training, evaluation, and visualization, allowing you to understand the practical aspects of applying graph deep learning techniques to social network data.

In the upcoming chapters, we will explore how graph deep learning is being applied to various domains, starting with natural language processing.

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