With ever-increasing available data, predicting individuals' preferences and helping them locate the most relevant information has become a pressing need. Understanding and predicting preferences is also important from a fundamental point of view, as part of what has been called a "new" computational social science. Here, we propose a novel approach based on stochastic block models, which have been developed by sociologists as plausible models of complex networks of social interactions. Our model is in the spirit of predicting individuals' preferences based on the preferences of others but, rather than fitting a particular model, we rely on a Bayesian approach that samples over the ensemble of all possible models. We show that our approach ...
We propose a class of actor-oriented statistical models for closed social networks in general, and f...
Machine learning has become one of the most active and exciting areas of computer science research, ...
People in the Internet era have to cope with the information overload, striving to find wh...
With ever-increasing available data, predicting individuals ’ preferences and helping them locate th...
This thesis focuses on exploiting the dynamics and correlations of preferences over social networks ...
Social networks facilitate a variety of social, economic, and political interactions. Homophily and ...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Learning the preferences of other people is crucial for predict-ing future behavior. Both children a...
Aggregated data in real world recommender applications of-ten feature fat-tailed distributions of th...
In our modern society, with the bourgeoning of e-commerce and online streaming platforms, customers ...
IEEE When users in online social networks make a decision, they are often affected by their neighbor...
Recommending products to users means estimating their prefer-ences for certain items over others. Th...
In social choice theory, preference aggregation refers to computing an aggregate preference over a s...
Recommender systems are used for user preference prediction in a variety of contexts. Most commonly...
People in the Internet era have to cope with the information overload, striving to find what they ar...
We propose a class of actor-oriented statistical models for closed social networks in general, and f...
Machine learning has become one of the most active and exciting areas of computer science research, ...
People in the Internet era have to cope with the information overload, striving to find wh...
With ever-increasing available data, predicting individuals ’ preferences and helping them locate th...
This thesis focuses on exploiting the dynamics and correlations of preferences over social networks ...
Social networks facilitate a variety of social, economic, and political interactions. Homophily and ...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Learning the preferences of other people is crucial for predict-ing future behavior. Both children a...
Aggregated data in real world recommender applications of-ten feature fat-tailed distributions of th...
In our modern society, with the bourgeoning of e-commerce and online streaming platforms, customers ...
IEEE When users in online social networks make a decision, they are often affected by their neighbor...
Recommending products to users means estimating their prefer-ences for certain items over others. Th...
In social choice theory, preference aggregation refers to computing an aggregate preference over a s...
Recommender systems are used for user preference prediction in a variety of contexts. Most commonly...
People in the Internet era have to cope with the information overload, striving to find what they ar...
We propose a class of actor-oriented statistical models for closed social networks in general, and f...
Machine learning has become one of the most active and exciting areas of computer science research, ...
People in the Internet era have to cope with the information overload, striving to find wh...