International audienceReal-time recommendation of Twitter users based on the content of their profiles is a very challenging task. Traditional IR methods such as TF-IDF fail to handle efficiently large datasets. In this paper we present a scalable approach that allows real time recommendation of users based on their tweets. Our model builds a graph of terms, driven by the fact that users sharing similar interests will share similar terms. We show how this model can be encoded as a compact binary footprint, that allows very fast comparison and ranking, taking full advantage of modern CPU architectures. We validate our approach through an empirical evaluation against the Apache Lucene's implementation of TF-IDF. We show that our approach is i...
International audienceMicroblogs, although extremely peculiar pieces of data, constitute a very rich...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
With the unprecedented growth of user-generated content produced on microblogging platforms, finding...
International audienceReal-time recommendation of Twitter users based on the content of their profil...
International audienceMicroblogging websites such as Twitter produce tremendous amounts of data each...
International audienceIn this paper we present a Friend Recommender System for micro-blogging. Tradi...
AbstractTwitter, the popular micro-blogging service, has gained a rapid growth in recent years. Newe...
Paper presented at the 4th ACM Conference on Recommender Systems (RecSys 2010), Barcelona, Spain, Se...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
The use of social networks sites has led to a challenging overload of information that helped new so...
Twitter has become an important social platform for individuals and people share a high number of in...
Paper presented at the 33rd European Conference on Information Retrieval (ECIR-11), 18-21 April, 201...
Twitter has been developed as an immense information creation and sharing network through which user...
Along with the rapid increase of using social networks sites such as Twitter, a massive number of tw...
We describe a production Twitter system for generating relevant, personalized, and timely recommenda...
International audienceMicroblogs, although extremely peculiar pieces of data, constitute a very rich...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
With the unprecedented growth of user-generated content produced on microblogging platforms, finding...
International audienceReal-time recommendation of Twitter users based on the content of their profil...
International audienceMicroblogging websites such as Twitter produce tremendous amounts of data each...
International audienceIn this paper we present a Friend Recommender System for micro-blogging. Tradi...
AbstractTwitter, the popular micro-blogging service, has gained a rapid growth in recent years. Newe...
Paper presented at the 4th ACM Conference on Recommender Systems (RecSys 2010), Barcelona, Spain, Se...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
The use of social networks sites has led to a challenging overload of information that helped new so...
Twitter has become an important social platform for individuals and people share a high number of in...
Paper presented at the 33rd European Conference on Information Retrieval (ECIR-11), 18-21 April, 201...
Twitter has been developed as an immense information creation and sharing network through which user...
Along with the rapid increase of using social networks sites such as Twitter, a massive number of tw...
We describe a production Twitter system for generating relevant, personalized, and timely recommenda...
International audienceMicroblogs, although extremely peculiar pieces of data, constitute a very rich...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
With the unprecedented growth of user-generated content produced on microblogging platforms, finding...