Predictive Analytics using Networked Data in R
Course Features
Duration
4 hours
Delivery Method
Online
Available on
Limited Access
Accessibility
Mobile, Desktop, Laptop
Language
English
Subtitles
English
Level
Intermediate
Teaching Type
Self Paced
Video Content
4 hours
Course Description
Course Overview
Virtual Labs
International Faculty
Post Course Interactions
Hands-On Training,Instructor-Moderated Discussions
Case Studies, Captstone Projects
Skills You Will Gain
Prerequisites/Requirements
Network Analysis in R
Supervised Learning in R: Classification
What You Will Learn
Learn to predict labels of nodes in networks using network learning and by extracting descriptive features from the network
In this course, you will use the igraph package to generate and label a network of customers in a churn setting and learn about the foundations of network learning
Then, you will learn about homophily, dyadicity and heterophilicty, and how these can be used to get key exploratory insights in your network
Next, you will use the functionality of the igraph package to compute various network features to calculate both node-centric as well as neighbor based network features
Course Instructors
Course Reviews
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