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Advertising Content and Consumer Engagement on Social Media: Evidence from Facebook
by
Nair, Harikesh S
, Hosanagar, Kartik
, Lee, Dokyun
in
Advertisements
/ Advertising
/ advertising content
/ Algorithms
/ Brands
/ Consumer behavior
/ consumer engagement
/ Consumers
/ content engineering
/ Conversion
/ Data processing
/ EdgeRank
/ Facebook
/ Humor
/ Impact analysis
/ machine learning
/ Marketing
/ marketing communication
/ Mass media effects
/ Natural language processing
/ News
/ News Feed algorithm
/ Online advertising
/ Personality
/ Product reviews
/ selection
/ Social media
/ Social networks
/ Viral marketing
2018
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Advertising Content and Consumer Engagement on Social Media: Evidence from Facebook
by
Nair, Harikesh S
, Hosanagar, Kartik
, Lee, Dokyun
in
Advertisements
/ Advertising
/ advertising content
/ Algorithms
/ Brands
/ Consumer behavior
/ consumer engagement
/ Consumers
/ content engineering
/ Conversion
/ Data processing
/ EdgeRank
/ Facebook
/ Humor
/ Impact analysis
/ machine learning
/ Marketing
/ marketing communication
/ Mass media effects
/ Natural language processing
/ News
/ News Feed algorithm
/ Online advertising
/ Personality
/ Product reviews
/ selection
/ Social media
/ Social networks
/ Viral marketing
2018
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Advertising Content and Consumer Engagement on Social Media: Evidence from Facebook
by
Nair, Harikesh S
, Hosanagar, Kartik
, Lee, Dokyun
in
Advertisements
/ Advertising
/ advertising content
/ Algorithms
/ Brands
/ Consumer behavior
/ consumer engagement
/ Consumers
/ content engineering
/ Conversion
/ Data processing
/ EdgeRank
/ Facebook
/ Humor
/ Impact analysis
/ machine learning
/ Marketing
/ marketing communication
/ Mass media effects
/ Natural language processing
/ News
/ News Feed algorithm
/ Online advertising
/ Personality
/ Product reviews
/ selection
/ Social media
/ Social networks
/ Viral marketing
2018
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Advertising Content and Consumer Engagement on Social Media: Evidence from Facebook
Journal Article
Advertising Content and Consumer Engagement on Social Media: Evidence from Facebook
2018
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Overview
We describe the effect of social media advertising content on customer engagement using data from Facebook. We content-code 106,316 Facebook messages across 782 companies, using a combination of Amazon Mechanical Turk and natural language processing algorithms. We use this data set to study the association of various kinds of social media marketing content with user engagement—defined as
Likes
, comments, shares, and click-throughs—with the messages. We find that inclusion of widely used content related to brand personality—like humor and emotion—is associated with higher levels of consumer engagement (
Likes
, comments, shares) with a message. We find that directly informative content—like mentions of price and deals—is associated with lower levels of engagement when included in messages in isolation, but higher engagement levels when provided in combination with brand personality–related attributes. Also, certain directly informative content, such as deals and promotions, drive consumers’ path to conversion (click-throughs). These results persist after incorporating corrections for the nonrandom targeting of Facebook’s EdgeRank (News Feed) algorithm and so reflect more closely user reaction to content than Facebook’s behavioral targeting. Our results suggest that there are benefits to content engineering that combines informative characteristics that help in obtaining immediate leads (via improved click-throughs) with brand personality–related content that helps in maintaining future reach and branding on the social media site (via improved engagement). These results inform content design strategies. Separately, the methodology we apply to content-code text is useful for future studies utilizing unstructured data such as advertising content or product reviews.
The online appendix is available at
https://doi.org/10.1287/mnsc.2017.2902
.
This paper was accepted by Chris Forman, information systems.
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