Book Image

Mastering Social Media Mining with R

Book Image

Mastering Social Media Mining with R

Overview of this book

With an increase in the number of users on the web, the content generated has increased substantially, bringing in the need to gain insights into the untapped gold mine that is social media data. For computational statistics, R has an advantage over other languages in providing readily-available data extraction and transformation packages, making it easier to carry out your ETL tasks. Along with this, its data visualization packages help users get a better understanding of the underlying data distributions while its range of "standard" statistical packages simplify analysis of the data. This book will teach you how powerful business cases are solved by applying machine learning techniques on social media data. You will learn about important and recent developments in the field of social media, along with a few advanced topics such as Open Authorization (OAuth). Through practical examples, you will access data from R using APIs of various social media sites such as Twitter, Facebook, Instagram, GitHub, Foursquare, LinkedIn, Blogger, and other networks. We will provide you with detailed explanations on the implementation of various use cases using R programming. With this handy guide, you will be ready to embark on your journey as an independent social media analyst.
Table of Contents (13 chapters)
Mastering Social Media Mining with R
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
Index

EDA – graphical analysis


"A picture is worth a thousand words."

Graphical analysis is quite popular, as it helps people grasp the content faster. The existence of so many dashboard tools in the market is also proof of this. With the recent innovation in the field of visualization, it is certainly one of the best mediums of communication.

In this section, let's explore a few graphical EDA. The graphical EDA techniques will help us get a more penetrative understanding of the data and also help in presenting complicated statistical analysis in a more understandable format. We will use some of the visualization packages in R that will help in making the output look better.

Which language is most popular among the active GitHub users?

We have the data at the repository level. Each repository is a project that could have been implemented in any language. Let's present the language data in a graphical format and understand the popularity. First, we will use the function table to see how many languages...