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Graph Machine Learning

You're reading from  Graph Machine Learning

Product type Book
Published in Jun 2021
Publisher Packt
ISBN-13 9781800204492
Pages 338 pages
Edition 1st Edition
Languages
Authors (3):
Claudio Stamile Claudio Stamile
Profile icon Claudio Stamile
Aldo Marzullo Aldo Marzullo
Profile icon Aldo Marzullo
Enrico Deusebio Enrico Deusebio
Profile icon Enrico Deusebio
View More author details

Table of Contents (15) Chapters

Preface Section 1 – Introduction to Graph Machine Learning
Chapter 1: Getting Started with Graphs Chapter 2: Graph Machine Learning Section 2 – Machine Learning on Graphs
Chapter 3: Unsupervised Graph Learning Chapter 4: Supervised Graph Learning Chapter 5: Problems with Machine Learning on Graphs Section 3 – Advanced Applications of Graph Machine Learning
Chapter 6: Social Network Graphs Chapter 7: Text Analytics and Natural Language Processing Using Graphs Chapter 8:Graph Analysis for Credit Card Transactions Chapter 9: Building a Data-Driven Graph-Powered Application Chapter 10: Novel Trends on Graphs Other Books You May Enjoy

Embedding for supervised and unsupervised fraud detection

In this section, we will describe how the bipartite and tripartite graphs described previously can be used by graph machine learning algorithms to build automatic procedures for fraud detection using supervised and unsupervised approaches. As we already discussed at the beginning of this chapter, transactions are represented by edges, and we then want to classify each edge in the correct class: fraudulent or genuine.

The pipeline we will use to perform the classification task is the following:

  • A sampling procedure for the imbalanced task
  • The use of an unsupervised embedding algorithm to create a feature vector for each edge
  • The application of supervised and unsupervised machine learning algorithms to the feature space defined in the previous point

Supervised approach to fraudulent transaction identification

Since our dataset is strongly imbalanced, with fraudulent transactions representing 2.83%...

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