Title
Classifying Twitter favorites: Like, bookmark, or Thanks?
Abstract
AbstractSince its foundation in 2006, Twitter has enjoyed a meteoric rise in popularity, currently boasting over 500 million users. Its short text nature means that the service is open to a variety of different usage patterns, which have evolved rapidly in terms of user base and utilization. Prior work has categorized Twitter users, as well as studied the use of lists and re-tweets and how these can be used to infer user profiles and interests. The focus of this article is on studying why and how Twitter users mark tweets as "favorites"-a functionality with currently poorly understood usage, but strong relevance for personalization and information access applications. Firstly, manual analysis and classification are carried out on a randomly chosen set of favorited tweets, which reveal different approaches to using this functionality i.e., bookmarks, thanks, like, conversational, and self-promotion. Secondly, an automatic favorites classification approach is proposed, based on the categories established in the previous step. Our machine learning experiments demonstrate a high degree of success in matching human judgments in classifying favorites according to usage type. In conclusion, we discuss the purposes to which these data could be put, in the context of identifying users' patterns of interests.
Year
DOI
Venue
2016
10.1002/asi.23352
Periodicals
Keywords
Field
DocType
information overload,machine learning,Internet
Data mining,Information overload,World Wide Web,Information retrieval,Computer science,Popularity,Information access,Boasting,Personalization,The Internet
Journal
Volume
Issue
ISSN
67
1
2330-1635
Citations 
PageRank 
References 
6
0.50
17
Authors
2
Name
Order
Citations
PageRank
Genevieve Gorrell126622.00
Kalina Bontcheva22538211.33