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Will the Global Village Fracture Into Tribes? Recommender Systems and Their Effects on Consumer Fragmentation
by
Buja, Andreas
, Lee, Dokyun
, Hosanagar, Kartik
, Fleder, Daniel
in
Algorithms
/ Analysis
/ Art periods
/ Collaboration
/ collaborative filtering
/ Consumers
/ Consumption
/ Control groups
/ Cosine function
/ Customers
/ Customization
/ Datasets
/ Density
/ Design
/ Economic analysis
/ Electronic commerce
/ filter bubble
/ Impact analysis
/ Information systems
/ Internet
/ Management science
/ Media coverage
/ Music
/ Online media
/ Personalization
/ Preferences
/ recommendation systems
/ Recommender systems
/ Retail stores
/ Segmentation
/ Statistical analysis
/ Studies
/ Tribes and tribal systems
2014
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Will the Global Village Fracture Into Tribes? Recommender Systems and Their Effects on Consumer Fragmentation
by
Buja, Andreas
, Lee, Dokyun
, Hosanagar, Kartik
, Fleder, Daniel
in
Algorithms
/ Analysis
/ Art periods
/ Collaboration
/ collaborative filtering
/ Consumers
/ Consumption
/ Control groups
/ Cosine function
/ Customers
/ Customization
/ Datasets
/ Density
/ Design
/ Economic analysis
/ Electronic commerce
/ filter bubble
/ Impact analysis
/ Information systems
/ Internet
/ Management science
/ Media coverage
/ Music
/ Online media
/ Personalization
/ Preferences
/ recommendation systems
/ Recommender systems
/ Retail stores
/ Segmentation
/ Statistical analysis
/ Studies
/ Tribes and tribal systems
2014
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Will the Global Village Fracture Into Tribes? Recommender Systems and Their Effects on Consumer Fragmentation
by
Buja, Andreas
, Lee, Dokyun
, Hosanagar, Kartik
, Fleder, Daniel
in
Algorithms
/ Analysis
/ Art periods
/ Collaboration
/ collaborative filtering
/ Consumers
/ Consumption
/ Control groups
/ Cosine function
/ Customers
/ Customization
/ Datasets
/ Density
/ Design
/ Economic analysis
/ Electronic commerce
/ filter bubble
/ Impact analysis
/ Information systems
/ Internet
/ Management science
/ Media coverage
/ Music
/ Online media
/ Personalization
/ Preferences
/ recommendation systems
/ Recommender systems
/ Retail stores
/ Segmentation
/ Statistical analysis
/ Studies
/ Tribes and tribal systems
2014
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Will the Global Village Fracture Into Tribes? Recommender Systems and Their Effects on Consumer Fragmentation
Journal Article
Will the Global Village Fracture Into Tribes? Recommender Systems and Their Effects on Consumer Fragmentation
2014
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Overview
Personalization is becoming ubiquitous on the World Wide Web. Such systems use statistical techniques to infer a customer's preferences and recommend content best suited to him (e.g., \"Customers who liked this also liked...\"). A debate has emerged as to whether personalization has drawbacks. By making the Web hyperspecific to our interests, does it fragment Internet users, reducing shared experiences and narrowing media consumption? We study whether personalization is in fact fragmenting the online population. Surprisingly, it does not appear to do so in our study. Personalization appears to be a tool that helps users widen their interests, which in turn creates commonality with others. This increase in commonality occurs for two reasons, which we term volume and product-mix effects. The volume effect is that consumers simply consume more after personalized recommendations, increasing the chance of having more items in common. The product-mix effect is that, conditional on volume, consumers buy a more similar mix of products after recommendations.
This paper was accepted by Sandra Slaughter, information systems.
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