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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
Languages
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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Toc

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

Understanding Flickr data


Now that we have created a sample app and extracted data using it in the previous section, let us move ahead and understand more about the data we get from Flickr. We will leverage packages such as httr, plyr, piper, and so on and build on our code base, as in previous chapters.

To begin with, let's use our utility function to extract ten days' worth of data. The following snippet extracts the data using the interestingness API end point:

# Mention day count
daysAnalyze = 10

interestingDF <- lapply(1:daysAnalyze,getInterestingData) %>>%
                    ( do.call(rbind, .) )

Now, if we look at the attributes of the DataFrame generated using the previous snippet, we have details like, data, photo.id, photo.owner, photo.title and so on. Though this DataFrame is useful in terms of identifying what photographs qualify as interesting on certain days, it does little to tell us much about the photographs themselves.

So the logical next step is to find, extract...

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