Title
Followee recommendation based on text analysis of micro-blogging activity
Abstract
Nowadays, more and more users keep up with news through information streams coming from real-time micro-blogging activity offered by services such as Twitter. In these sites, information is shared via a followers/followees social network structure in which a follower receives all the micro-blogs from his/her followees. Recent research efforts on understanding micro-blogging as a novel form of communication and news spreading medium have identified three different categories of users in these systems: information sources, information seekers and friends. As social networks grow in the number of registered users, finding relevant and reliable users to receive interesting information becomes essential. In this paper we propose a followee recommender system based on both the analysis of the content of micro-blogs to detect users' interests and in the exploration of the topology of the network to find candidate users for recommendation. Experimental evaluation was conducted in order to determine the impact of different profiling strategies based on the text analysis of micro-blogs as well as several factors that allows the identification of users acting as good information sources. We found that user-generated content available in the network is a rich source of information for profiling users and finding like-minded people.
Year
DOI
Venue
2013
10.1016/j.is.2013.05.009
Inf. Syst.
Keywords
Field
DocType
information source,good information source,micro-blogging activity,different profiling strategy,followee recommendation,interesting information,followees social network structure,different category,social network,text analysis,information seeker,information stream,profiling user,recommender systems,micro blogging,text mining
Recommender system,Seekers,Data mining,World Wide Web,Text mining,Social network,Social media,Profiling (computer programming),Computer science,Microblogging,Database
Journal
Volume
Issue
ISSN
38
8
0306-4379
Citations 
PageRank 
References 
21
0.69
31
Authors
3
Name
Order
Citations
PageRank
M. G. Armentano1210.69
Daniela Godoy250238.22
Analia Amandi325513.43