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Learning Social Media Analytics with R

You're reading from   Learning Social Media Analytics with R Transform data from social media platforms into actionable business insights

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Product type Paperback
Published in May 2017
Publisher Packt
ISBN-13 9781787127524
Length 394 pages
Edition 1st Edition
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Tools
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Authors (4):
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Raghav Bali Raghav Bali
Author Profile Icon Raghav Bali
Raghav Bali
Dipanjan Sarkar Dipanjan Sarkar
Author Profile Icon Dipanjan Sarkar
Dipanjan Sarkar
Karthik Ganapathy Karthik Ganapathy
Author Profile Icon Karthik Ganapathy
Karthik Ganapathy
Tushar Sharma Tushar Sharma
Author Profile Icon Tushar Sharma
Tushar Sharma
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Table of Contents (10) Chapters Close

Preface 1. Getting Started with R and Social Media Analytics 2. Twitter – What's Happening with 140 Characters FREE CHAPTER 3. Analyzing Social Networks and Brand Engagements with Facebook 4. Foursquare – Are You Checked in Yet? 5. Analyzing Software Collaboration Trends I – Social Coding with GitHub 6. Analyzing Software Collaboration Trends II - Answering Your Questions with StackExchange 7. Believe What You See – Flickr Data Analysis 8. News – The Collective Social Media! Index

Text analytics

Text analytics is also often called text mining. This is basically the process of extracting and deriving meaningful patterns from textual data which can in turn be translated into actionable knowledge and insights. Text analytics consist of a collection of machine learning, natural language processing, linguistic, and statistical methods that can be leveraged to analyze text data. Machine-learning algorithms are built to work on numeric data in general, so extra processing and feature extraction and engineering is needed for text analytics to make regular machine learning and statistical methods work on unstructured data.

Natural language processing, popularly known as NLP, aids in doing this. NLP is defined as a specialized field in computer science and engineering and artificial intelligence which has its roots and origins in computational linguistics. Concepts and techniques from NLP are extremely useful and help in building applications and systems that enable interaction between machines and humans with the aid of natural language which is indeed a daunting task. Some of the main applications of NLP are:

  • Question-answering systems
  • Speech recognition
  • Machine translation
  • Text categorization and classification
  • Text summarization

We will be using several concepts from these when we analyze unstructured textual data from social media in the upcoming chapters.

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