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Hands-On Graph Analytics with Neo4j

Hands-On Graph Analytics with Neo4j

By : Scifo
4.6 (9)
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Hands-On Graph Analytics with Neo4j

Hands-On Graph Analytics with Neo4j

4.6 (9)
By: Scifo

Overview of this book

Neo4j is a graph database that includes plugins to run complex graph algorithms. The book starts with an introduction to the basics of graph analytics, the Cypher query language, and graph architecture components, and helps you to understand why enterprises have started to adopt graph analytics within their organizations. You’ll find out how to implement Neo4j algorithms and techniques and explore various graph analytics methods to reveal complex relationships in your data. You’ll be able to implement graph analytics catering to different domains such as fraud detection, graph-based search, recommendation systems, social networking, and data management. You’ll also learn how to store data in graph databases and extract valuable insights from it. As you become well-versed with the techniques, you’ll discover graph machine learning in order to address simple to complex challenges using Neo4j. You will also understand how to use graph data in a machine learning model in order to make predictions based on your data. Finally, you’ll get to grips with structuring a web application for production using Neo4j. By the end of this book, you’ll not only be able to harness the power of graphs to handle a broad range of problem areas, but you’ll also have learned how to use Neo4j efficiently to identify complex relationships in your data.
Table of Contents (18 chapters)
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1
Section 1: Graph Modeling with Neo4j
5
Section 2: Graph Algorithms
10
Section 3: Machine Learning on Graphs
14
Section 4: Neo4j for Production

Building a data science project

Machine learning can be defined as the process from which an algorithm learns from data in order to be able to extract information that is useful for some business or research interest.

Even though all data science projects are different, a certain number of common steps can still be identified:

  1. Problem definition
  2. Data collection and cleaning
  3. Feature engineering
  4. Model building and evaluation
  5. Deployment

Even if these steps follow a logical order, the process is never linear and consists of back and forth operations between these different steps. It can be useful to go back to the problem definition after the data collection phase, for example, as well as returning to the feature engineering and model evaluation phases as many times as required to reach the desired outcomes. The following diagram illustrates this idea of moving back and forth between the different steps of a project:

This project structure also applies when analyzing graph data, which...

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