Link recommendation is an important and compelling problem at the intersection of recommender systems and online social networks. Given a user, link recommenders identify people in the platform the user might be interested in interacting with. We present RELISON, an extensible framework for running link recommendation experiments. The library provides a wide range of algorithms, along with tools for evaluating the produced recommendations. RELISON includes algorithms and metrics that consider the potential effect of recommendations on the properties of online social networks. For this reason, the library also implements network structure analysis metrics, community detection algorithms, and network diffusion simulation functionalities. The ...
Tesis doctoral inédita leída en la Universidad Autónoma de Madrid, Escuela Politécnica Superior, Dep...
Learning user interests from online social networks helps to better understand user behaviors and pr...
Online social networks like Facebook recommend new friends to users based on an explicit social netw...
The goal of this chapter is to give an overview of recent works on the development of social link-ba...
Social networks like Facebook and Twitter are prevailing nowadays. People use social networks to sta...
Social link recommendation systems, like "People-you-may-know" on Facebook, "Who-to-follow" on Twitt...
Alongside the continuous development of Internet technologies, traditional social\ud networks are ru...
Contact recommendation has become a common functionality in online social platforms, and an establis...
Link recommendation, which recommends links to connect unlinked online social network users, is a fu...
We study the problem of recommending hyperlinks to users in social media. We start with a candidate ...
Online Social Networks currently have an important role in the life of millions of active internet u...
Today, online social networks are very popular due to the possibility of creating relationships betw...
International audienceRecommender systems are widely used for personalization of information on the ...
The continued and diversified growth of social networks has changed the way in which users interact ...
"A thesis submitted in fulfilment for the degree of Doctor of Philosophy in the Department of Comput...
Tesis doctoral inédita leída en la Universidad Autónoma de Madrid, Escuela Politécnica Superior, Dep...
Learning user interests from online social networks helps to better understand user behaviors and pr...
Online social networks like Facebook recommend new friends to users based on an explicit social netw...
The goal of this chapter is to give an overview of recent works on the development of social link-ba...
Social networks like Facebook and Twitter are prevailing nowadays. People use social networks to sta...
Social link recommendation systems, like "People-you-may-know" on Facebook, "Who-to-follow" on Twitt...
Alongside the continuous development of Internet technologies, traditional social\ud networks are ru...
Contact recommendation has become a common functionality in online social platforms, and an establis...
Link recommendation, which recommends links to connect unlinked online social network users, is a fu...
We study the problem of recommending hyperlinks to users in social media. We start with a candidate ...
Online Social Networks currently have an important role in the life of millions of active internet u...
Today, online social networks are very popular due to the possibility of creating relationships betw...
International audienceRecommender systems are widely used for personalization of information on the ...
The continued and diversified growth of social networks has changed the way in which users interact ...
"A thesis submitted in fulfilment for the degree of Doctor of Philosophy in the Department of Comput...
Tesis doctoral inédita leída en la Universidad Autónoma de Madrid, Escuela Politécnica Superior, Dep...
Learning user interests from online social networks helps to better understand user behaviors and pr...
Online social networks like Facebook recommend new friends to users based on an explicit social netw...