Wednesday, September 11, 2019

Word of the Day: graph analytics

 
Word of the Day WhatIs.com
Daily updates on the latest technology terms | September 11, 2019
graph analytics

Graph analytics is a category of tools used to apply algorithms that will help a data analyst understand the relationship between graph database entries.

The structure of a graph is made up of nodes (also known as vertices) and edges. Nodes denote points in the graph data. For example, accounts, customers, devices, groups of people, organizations, products or locations may all be represented as a node. Edges symbolize the relationships, or lines of communication, between nodes. Every edge can have a direction, either one-way or bidirectional, and a weight, to depict the strength of the relationship.

Once the graph database is constructed, analytics can be applied. The algorithms can be used to identify values or uncover insights within the data such as the average path length between nodes, nodes that might be outliers and nodes with dominant activity. It can also be used to arrange the data in new ways such as partitioning information into sections for individual analysis or searching for nodes that meet specific criteria.

Some common tools used to create graph analytics include Apache Spark GraphX, IBM Graph, Gradoop, Google Charts, Cytoscape and Gephi.

Types of graph analytics

There are four main types of analytics that can be applied to graphs:

  • Path analysis - This focuses on the relationships between two nodes in a graph. This type of graph analytics can help identify the shortest path between nodes, find the widest path between weighted nodes and calculate a spanning tree around a center point.
  • Connectivity analysis - This focuses on the weight of the edges between nodes. It can be applied to identify weaknesses in a system or anomalies such as abnormally high or low activity.
  • Community analysis - This focuses on the interactions between nodes. It clusters nodes into labeled groups of similar objects to help with organization.
  • Centrality analysis - This focuses on the relevancy of each node in a graph. It can be used to rank popularity or influence between nodes.

Examples of applications for graph analytics

Graph analytics can be used for a variety of applications, such as:

  • Detecting cybercrimes such as money laundering, identity fraud and cyberterrorism.
  • Applying analysis to social networks and communities such as monitoring statistics and identifying influencers.
  • Performing analysis on the traffic and quality of service for computer networks.
  • Optimizing logistics for manufacturing and transportation industries.
  • Determining page rank analytics and tracking their popularity or amount of clicks.
  • Analyzing the parts of a software application and how they interact to find potential issues.

Quote of the Day

 
"Graph databases are finding a place in analytics applications at organizations that need to be able to map and understand the connections in large and varied data sets." - Jack Vaughan

Learning Center

 

Adobe brings graph database to customer journey touchpoints
With Customer Journey Analytics, Adobe hopes to drive deeper insights into mapping customer journey touchpoints and take on ID resolution issues by folding in graph database technology.

Expect graph database use cases for the enterprise to take off
Digital giants like Amazon, Netflix and LinkedIn use graph databases: Traditional enterprises not so much. Read why EY Advisory Services and other experts believe graph database use cases for the enterprise will enjoy strong growth.

Advantages of graph databases: Easier data modeling, analytics
Graph database software offers an alternative to relational systems for big data analytics and other applications. The potential advantages of graph databases include the ability to map the connections in data sets and do analytics without the need to create complex data joins.

AI, graph databases among top BI and analytics trends
IT consultant William McKnight laid out the top BI and analytics trends for 2019 and beyond, starting with AI, data visualization and graph databases.

Augmented analytics tools, NLP search, graph are trending
Augmented analytics tools, NLP search and graph analytics are the top trends for 2019 and beyond. Experts say augmented analytics and NLP are transforming how enterprises consume data and derive insights from it.

Quiz Yourself

 
To remain effective, analytical processes must ________ fine-tuned.
A. constantly stay
B. stay constantly

Answer

Stay in Touch

 
For feedback about any of our definitions or to suggest a new definition, please contact me at: mrouse@techtarget.com

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