Understanding the behavior of users in online systems is of essential importance for sociology, system design, e-commerce, and beyond. Most existing models assume that individuals in diverse systems, ranging from social networks to e-commerce platforms, tend to what is already popular. We propose a statistical time-aware framework to identify the users who differ from the usual behavior by being repeatedly and persistently among the first to collect the items that later become hugely popular. Since these users effectively discover future hits, we refer them as discoverers. We use the proposed framework to demonstrate that discoverers are present in a wide range of real systems. Once identified, discoverers can be used to predict the...
In this paper, we describe our submission to the predictive web analytics Discovery Challenge at ECM...
The dynamics of online content popularity has attracted more and more researches in recent years. In...
People are increasingly relying on the Web and social media to find solutions to their problems in a...
In this paper, the perceptive user, who could identify the high-quality objects in their initial lif...
This dissertation documents our research on the discovery and analysis of social networks based on u...
Network evolution is a hot research topic especially when social networking has become an important ...
A relevant fraction of human interactions occurs on online social networks. In this context, the fre...
Social media, regarded as two-layer networks consisting of users and items, turn out to be the most ...
Human activities increasingly take place in online environments, providing novel opportunities for r...
Given the set of social interactions of a user, how can we detect changes in interaction patterns ov...
Social networks are ubiquitous in the modern world for propagating and acquiring information. Thus, ...
Predicting the popularity of social media content in real time requires approaches that efficiently ...
We present and study data concerning human behavior in four online social systems: (i) an Internet c...
Number of friends (or followers) is an important factor in social network. Attracting friends (or fo...
Web and mobile technologies have had such profound impact that we have witnessed significant evoluti...
In this paper, we describe our submission to the predictive web analytics Discovery Challenge at ECM...
The dynamics of online content popularity has attracted more and more researches in recent years. In...
People are increasingly relying on the Web and social media to find solutions to their problems in a...
In this paper, the perceptive user, who could identify the high-quality objects in their initial lif...
This dissertation documents our research on the discovery and analysis of social networks based on u...
Network evolution is a hot research topic especially when social networking has become an important ...
A relevant fraction of human interactions occurs on online social networks. In this context, the fre...
Social media, regarded as two-layer networks consisting of users and items, turn out to be the most ...
Human activities increasingly take place in online environments, providing novel opportunities for r...
Given the set of social interactions of a user, how can we detect changes in interaction patterns ov...
Social networks are ubiquitous in the modern world for propagating and acquiring information. Thus, ...
Predicting the popularity of social media content in real time requires approaches that efficiently ...
We present and study data concerning human behavior in four online social systems: (i) an Internet c...
Number of friends (or followers) is an important factor in social network. Attracting friends (or fo...
Web and mobile technologies have had such profound impact that we have witnessed significant evoluti...
In this paper, we describe our submission to the predictive web analytics Discovery Challenge at ECM...
The dynamics of online content popularity has attracted more and more researches in recent years. In...
People are increasingly relying on the Web and social media to find solutions to their problems in a...