Social networks are getting closer to our real physical world. People share the exact location and time of their check-ins and are influenced by their friends. Modeling the spatio-temporal behavior of users in social networks is of great importance for predicting the future behavior of users, controlling the users' movements, and finding the latent influence network. It is observed that users have periodic patterns in their movements. Also, they are influenced by the locations that their close friends recently visited. Leveraging these two observations, we propose a probabilistic model based on a doubly stochastic point process with a periodic-decaying kernel for the time of check-ins and a time-varying multinomial distribution for the loca...
We propose a latent self-exciting point process model that describes geographically distributed inte...
Twitter, together with other online social networks, such as Facebook, and Gowalla have begun to col...
Location-based social networks (LBSNs) have become a popular form of social media in recent years. T...
In this entry, we extract temporal and spatial outlier events from a large online location-based soc...
Geo-location data from the check-ins made in online social media offers us information, in new ways,...
Social network data is generally incomplete with missing information about nodes and their interacti...
As there is great differences of movement patterns and social correlation between weekdays and weeke...
The location check-ins of users through various location-based services such as Foursquare, Twitter ...
In this entry, we extract temporal and spatial outlier events from a large online location-based soc...
Nowadays, events are spread rapidly along social networks. We are interested in whether people’s res...
Location Based Social Networks (LBSN) like Twitter or Instagram are a good source for user spatio-te...
Location data is a powerful source of information to discover user’s trends and routines. A suitable...
Abstract Location-based social network (LBSN) is at the forefront of emerging trends in social netwo...
In mobile computing research area, it is highly desirable to understand the characteristics of user ...
Online social networks are valuable sources of information to monitor real-time events, su...
We propose a latent self-exciting point process model that describes geographically distributed inte...
Twitter, together with other online social networks, such as Facebook, and Gowalla have begun to col...
Location-based social networks (LBSNs) have become a popular form of social media in recent years. T...
In this entry, we extract temporal and spatial outlier events from a large online location-based soc...
Geo-location data from the check-ins made in online social media offers us information, in new ways,...
Social network data is generally incomplete with missing information about nodes and their interacti...
As there is great differences of movement patterns and social correlation between weekdays and weeke...
The location check-ins of users through various location-based services such as Foursquare, Twitter ...
In this entry, we extract temporal and spatial outlier events from a large online location-based soc...
Nowadays, events are spread rapidly along social networks. We are interested in whether people’s res...
Location Based Social Networks (LBSN) like Twitter or Instagram are a good source for user spatio-te...
Location data is a powerful source of information to discover user’s trends and routines. A suitable...
Abstract Location-based social network (LBSN) is at the forefront of emerging trends in social netwo...
In mobile computing research area, it is highly desirable to understand the characteristics of user ...
Online social networks are valuable sources of information to monitor real-time events, su...
We propose a latent self-exciting point process model that describes geographically distributed inte...
Twitter, together with other online social networks, such as Facebook, and Gowalla have begun to col...
Location-based social networks (LBSNs) have become a popular form of social media in recent years. T...