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Modern Graph Theory Algorithms with Python

You're reading from   Modern Graph Theory Algorithms with Python Harness the power of graph algorithms and real-world network applications using Python

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Product type Paperback
Published in Jun 2024
Publisher Packt
ISBN-13 9781805127895
Length 290 pages
Edition 1st Edition
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Concepts
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Authors (2):
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Franck Kalala Mutombo Franck Kalala Mutombo
Author Profile Icon Franck Kalala Mutombo
Franck Kalala Mutombo
Colleen M. Farrelly Colleen M. Farrelly
Author Profile Icon Colleen M. Farrelly
Colleen M. Farrelly
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Table of Contents (21) Chapters Close

Preface 1. Part 1:Introduction to Graphs and Networks with Examples FREE CHAPTER
2. Chapter 1: What is a Network? 3. Chapter 2: Wrangling Data into Networks with NetworkX and igraph 4. Part 2: Spatial Data Applications
5. Chapter 3: Demographic Data 6. Chapter 4: Transportation Data 7. Chapter 5: Ecological Data 8. Part 3: Temporal Data Applications
9. Chapter 6: Stock Market Data 10. Chapter 7: Goods Prices/Sales Data 11. Chapter 8: Dynamic Social Networks 12. Part 4: Advanced Applications
13. Chapter 9: Machine Learning for Networks 14. Chapter 10: Pathway Mining 15. Chapter 11: Mapping Language Families – an Ontological Approach 16. Chapter 12: Graph Databases 17. Chapter 13: Putting It All Together 18. Chapter 14: New Frontiers 19. Index 20. Other Books You May Enjoy

DL on networks

In this section, we’ll consider a new type of DL model called GNNs, which process and operate on networks by embedding vertex, edge, or global properties of the network to learn outcomes related to individual networks, vertex properties within a network, or edge properties within a network. Essentially, the DL architecture evolves the topology of these embeddings to find key topological features in the input data that are predictive of the outcome. This can be done in a fully supervised or semi-supervised fashion. In this example, we’ll focus on SSL, where only some of the labels are known; however, by providing all labels as input, this can be changed to an SL setting.

Before we dive into the technical details of GNNs, let’s explore their use cases in more depth. Classifying networks themselves often yields important insight into problems such as image features or type, molecular compound toxicity or potential use as a pharmaceutical agent, or...

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