Mobility prediction is becoming one of the key elements of location-based services. In the near future, it will also facilitate tasks such as resource management, logistics administration and urban planning. To predict human mobility, many techniques have been proposed. However, existing techniques are usually driven by large volumes of data to train user mobility models computed over a long duration and stored in a centralized server. This results in inherently long waiting times before the prediction model kicks in. Over this large training data, small time bounded user movements are shadowed, due to their marginality, thus impacting the granularity of predictions. Transferring highly sensitive location data to third party entities also e...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Location-based services today, exceedingly depend on user mobility prediction, in order to push cont...
Location-based services today, exceedingly depend on user mobility prediction, in order to push cont...
Abstract Predictive models for human mobility have important applications in many fields including t...
Mobility trace data typically includes historical information of the user's visited locations, which...
The growing ubiquity of smart-phones equipped with built-in sensors and global positioning...
We are witnessing an increasing need to accurately measure people’s mobility as it has become...
darmstadt.de Several algorithms to predict the next place visited by a user have been proposed in th...
Abstract—Mobile location-based services are thriving, provid-ing an unprecedented opportunity to col...
Location prediction systems that attempt to determine the mobility patterns of individuals in their ...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
We present the work that allowed us to win the Next-Place Prediction task of the Nokia Mobile Data C...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Location-based services today, exceedingly depend on user mobility prediction, in order to push cont...
Location-based services today, exceedingly depend on user mobility prediction, in order to push cont...
Abstract Predictive models for human mobility have important applications in many fields including t...
Mobility trace data typically includes historical information of the user's visited locations, which...
The growing ubiquity of smart-phones equipped with built-in sensors and global positioning...
We are witnessing an increasing need to accurately measure people’s mobility as it has become...
darmstadt.de Several algorithms to predict the next place visited by a user have been proposed in th...
Abstract—Mobile location-based services are thriving, provid-ing an unprecedented opportunity to col...
Location prediction systems that attempt to determine the mobility patterns of individuals in their ...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
We present the work that allowed us to win the Next-Place Prediction task of the Nokia Mobile Data C...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Forecasting the future positions of mobile users is a valuable task allowing us to operate efficient...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...