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Hands-On Graph Analytics with Neo4j

You're reading from   Hands-On Graph Analytics with Neo4j Perform graph processing and visualization techniques using connected data across your enterprise

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Product type Paperback
Published in Aug 2020
Publisher Packt
ISBN-13 9781839212611
Length 510 pages
Edition 1st Edition
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Author (1):
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Estelle Scifo Estelle Scifo
Author Profile Icon Estelle Scifo
Estelle Scifo
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Table of Contents (18) Chapters Close

Preface 1. Section 1: Graph Modeling with Neo4j
2. Graph Databases FREE CHAPTER 3. The Cypher Query Language 4. Empowering Your Business with Pure Cypher 5. Section 2: Graph Algorithms
6. The Graph Data Science Library and Path Finding 7. Spatial Data 8. Node Importance 9. Community Detection and Similarity Measures 10. Section 3: Machine Learning on Graphs
11. Using Graph-based Features in Machine Learning 12. Predicting Relationships 13. Graph Embedding - from Graphs to Matrices 14. Section 4: Neo4j for Production
15. Using Neo4j in Your Web Application 16. Neo4j at Scale 17. Other Books You May Enjoy

Adjacency-based embedding

Graphs can be represented as large matrices pretty easily. The first technique we are going to study that can reduce the size of this matrix is called matrix factorization.

The adjacency matrix and graph Laplacian

Similar to text analysis, graphs can be represented by a very large matrix encoding the relationships between nodes. We have already used such a matrix in the preceding chapters – the adjacency matrix, named M in the following diagram:

Other algorithms rely on the graph Laplacian matrix L = D - M where D is the diagonal matrix containing the degree of each node. But the principles remain unchanged.

Eigenvectors embedding

One simple way of reducing the size of the matrix is to decompose it into eigenvectors, and use only a reduced number of these vectors as embedding.

An example of such graph representation can be seen when using graph positioning. Indeed, drawing a graph on a two-dimensional plane is a type of embedding. One of the positioning...

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