Glossary
- Recommender:
-
A system that recommends items (e.g., news articles, blog posts) to users
- Response Rate:
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The probability that a user would respond to (e.g., click, share) a recommended item
- Feature:
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Information (about a user, an item, and the context in which the item may be recommended to the user) that can be used to predict the response rate
- Page:
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A web page on which recommended items are placed
- Context:
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The situation (which includes time, geographical location, location of a web page, etc.) in which recommendations are made to a user
- Graph:
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A set of nodes connected by a set of edges
Definition
Social media sites (like twitter.com, digg.com, blogger.com) complement traditional media by incorporating content generated by regular people and allowing users to interact with content through sharing, commenting, voting,...
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Chen, BC. (2014). Spatiotemporal Personalized Recommendation of Social Media Content. In: Alhajj, R., Rokne, J. (eds) Encyclopedia of Social Network Analysis and Mining. Springer, New York, NY. https://doi.org/10.1007/978-1-4614-6170-8_325
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