YoVDO

Visualizing static networks with R

Offered By: Coursera Project Network via Coursera

Tags

Data Analysis Courses Data Visualization Courses R Programming Courses Network Analysis Courses

Course Description

Overview

In daily life, our connections with family and friends form our social networks. Across the country, roads between different places form transportation networks. In research areas, collaborations among different researchers form research collaboration networks. Visible or invisible, networks exist in many aspects of our life. Being able to visualize networks will help us understand relationships embedded in complicated network information. In this project, learners will visualize various types of static networks of marvel heroes using the igraph package and base R plot functions. We can easily use static networks in reports and presentations. A good handle of this method will help learners, from both academia and industry, quickly express informative relationships and connections among different variables.

Syllabus

  • Project Overview
    • In daily life, our connections with family and friends form our social networks. Across the country, roads between different places form transportation networks. In research areas, collaborations among different researchers form research collaboration networks. Visible or invisible, networks exist in many aspects of our life. Being able to visualize networks will help us understand relationships embedded in complicated network information. Static networks can be easily used in reports and presentations. In this project, learners will plot various types of static networks of marvel heroes using R programming. A good handle of this method will help learners quickly express informative relationships and connections among different variables.

Taught by

You (Lilian) Cheng

Related Courses

Social Network Analysis
University of Michigan via Coursera
Intro to Algorithms
Udacity
Data Analysis
Johns Hopkins University via Coursera
Computing for Data Analysis
Johns Hopkins University via Coursera
Health in Numbers: Quantitative Methods in Clinical & Public Health Research
Harvard University via edX