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Graph Data Science with Neo4j

You're reading from  Graph Data Science with Neo4j

Product type Book
Published in Jan 2023
Publisher Packt
ISBN-13 9781804612743
Pages 288 pages
Edition 1st Edition
Languages
Author (1):
Estelle Scifo Estelle Scifo
Profile icon Estelle Scifo

Table of Contents (16) Chapters

Preface 1. Part 1 – Creating Graph Data in Neo4j
2. Chapter 1: Introducing and Installing Neo4j 3. Chapter 2: Importing Data into Neo4j to Build a Knowledge Graph 4. Part 2 – Exploring and Characterizing Graph Data with Neo4j
5. Chapter 3: Characterizing a Graph Dataset 6. Chapter 4: Using Graph Algorithms to Characterize a Graph Dataset 7. Chapter 5: Visualizing Graph Data 8. Part 3 – Making Predictions on a Graph
9. Chapter 6: Building a Machine Learning Model with Graph Features 10. Chapter 7: Automatically Extracting Features with Graph Embeddings for Machine Learning 11. Chapter 8: Building a GDS Pipeline for Node Classification Model Training 12. Chapter 9: Predicting Future Edges 13. Chapter 10: Writing Your Custom Graph Algorithms with the Pregel API in Java 14. Index 15. Other Books You May Enjoy

Using features from graph algorithms in a scikit-learn pipeline

Now we have all the necessary knowledge to actually use graphs for ML. In this section, we are going to wrap everything up using the GDS Python client to create features and extract data into a dataframe that can be fed into a scikit-learn model training pipeline.

But before we get to this, let me give you an overview of the ML possibilities with graphs.

Machine learning tasks with graphs

In general, ML comprises several types of tasks on various kinds of objects: from sales predictions with time series analysis to patient diagnosis thanks to medical imagery to text translation in many languages with natural language processing (NLP), ML has proven its usefulness in many situations.

In each of these cases, you have to build a dataset made of observations (usually, the rows). Each observation has a certain number of characteristics or features (that is, the columns of your dataset). Depending on the task, you...

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