Quite a number of recent works have concentrated on the task of recommending to Twitter users whom they should follow, among which, the WTF (Who To Follow) service provided by Twitter. Recommenders are based either on the user's network structure, or on some notion of topical similarity with other users, or on both. We present a method for analysis of Twitter users supported by a hierarchical representation of their interests, which we call a Twixonomy. The use of Twixonomy casts both problems of user classification and recommendation as one of itemset mining, where items are either users' authoritative friends or semantic categories associated to friends. In addition to evaluating our profiler and recommender on several populations, we als...
Twitter has become an important social platform for individuals and people share a high number of in...
The advent of internet has served as an offspring for the significant growth of online services and ...
The increasing popularity of social networks has encouraged a large number of significant research w...
In this paper we propose a Twitter recommender based on a semantic description of users' interests. ...
Presented at the 33rd European Conference on Information Retrieval (ECIR-11), DCU, Dublin, Ireland, ...
The huge number of modern social network users has made the web a fertile ground for the growth and ...
Twitter, due to its massive growth as a social networking platform, has been in focus for the analys...
The growing number of users in microblogging sites such as Twitter has created the problem of search...
Social recommender systems, such as “Who to follow” on Twitter, utilize approaches that recommend fr...
Paper presented at the 4th ACM Conference on Recommender Systems (RecSys 2010), Barcelona, Spain, Se...
This paper aims to examine whether users' watching networks can improve collaborative filtering-base...
Nowadays, the emerging popularity of Social Web raises new application areas for recommender systems...
This paper aims to examine whether users' watching networks can improve collaborative filtering-base...
With the rapid proliferation of microblogging services such as Twitter, a large number of tweets is ...
Abstract. Twitter is a social information network where short messages or tweets are shared among a ...
Twitter has become an important social platform for individuals and people share a high number of in...
The advent of internet has served as an offspring for the significant growth of online services and ...
The increasing popularity of social networks has encouraged a large number of significant research w...
In this paper we propose a Twitter recommender based on a semantic description of users' interests. ...
Presented at the 33rd European Conference on Information Retrieval (ECIR-11), DCU, Dublin, Ireland, ...
The huge number of modern social network users has made the web a fertile ground for the growth and ...
Twitter, due to its massive growth as a social networking platform, has been in focus for the analys...
The growing number of users in microblogging sites such as Twitter has created the problem of search...
Social recommender systems, such as “Who to follow” on Twitter, utilize approaches that recommend fr...
Paper presented at the 4th ACM Conference on Recommender Systems (RecSys 2010), Barcelona, Spain, Se...
This paper aims to examine whether users' watching networks can improve collaborative filtering-base...
Nowadays, the emerging popularity of Social Web raises new application areas for recommender systems...
This paper aims to examine whether users' watching networks can improve collaborative filtering-base...
With the rapid proliferation of microblogging services such as Twitter, a large number of tweets is ...
Abstract. Twitter is a social information network where short messages or tweets are shared among a ...
Twitter has become an important social platform for individuals and people share a high number of in...
The advent of internet has served as an offspring for the significant growth of online services and ...
The increasing popularity of social networks has encouraged a large number of significant research w...