In this work, we investigate the performance of Markov Chains with respect to modelling semantic trajectories and predicting future locations. In the first part, we examine whether and to what degree the semantic level of semantic trajectories affects the predictive performance of a spatial Markov model. It can be shown that the choice of the semantic level when describing trajectories has a significant impact on the accuracy of the models. High-level descriptions lead to better results than low-level ones. The second part introduces a multi-dimensional Markov Chain construct that considers, besides locations, additional context information, such as time, day and the users’ activity. While the respective approach is able to outperform...
In this paper, within the scope of optimizing location prediction systems and in line with the Ontol...
An ever-increasing number of diverse, real-life applications, ranging from mobile to social media ap...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...
In this work, we investigate the performance of Markov Chains with respect to modelling semantic tra...
Location prediction systems that attempt to determine the mobility patterns of individuals in their ...
Understanding human mobility benefits numerous applications such as urban planning, traffic control,...
International audienceNowadays, with a growing use of location-aware, wirelessly connected, mobile d...
Location prediction has attracted much attention due to its important role in many location-based se...
page number: 187-198International audienceNowadays, with a growing use of location-aware, wirelessly...
User location prediction in location-based social networks can predict the density of people flow we...
With the rise in the Internet of Things (IOT), mobile devices and Location-Based Social Network (LBS...
The increasing availability of location-acquisition technologies has enabled collecting large-scale ...
Mining trajectory data to find interesting patterns is of increasing research interest due to a broa...
Trajectory mining has gained growing attention due to its emerging applications, such as location-ba...
International audienceMost of the existing approaches for trajectory modelling propose to enrich str...
In this paper, within the scope of optimizing location prediction systems and in line with the Ontol...
An ever-increasing number of diverse, real-life applications, ranging from mobile to social media ap...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...
In this work, we investigate the performance of Markov Chains with respect to modelling semantic tra...
Location prediction systems that attempt to determine the mobility patterns of individuals in their ...
Understanding human mobility benefits numerous applications such as urban planning, traffic control,...
International audienceNowadays, with a growing use of location-aware, wirelessly connected, mobile d...
Location prediction has attracted much attention due to its important role in many location-based se...
page number: 187-198International audienceNowadays, with a growing use of location-aware, wirelessly...
User location prediction in location-based social networks can predict the density of people flow we...
With the rise in the Internet of Things (IOT), mobile devices and Location-Based Social Network (LBS...
The increasing availability of location-acquisition technologies has enabled collecting large-scale ...
Mining trajectory data to find interesting patterns is of increasing research interest due to a broa...
Trajectory mining has gained growing attention due to its emerging applications, such as location-ba...
International audienceMost of the existing approaches for trajectory modelling propose to enrich str...
In this paper, within the scope of optimizing location prediction systems and in line with the Ontol...
An ever-increasing number of diverse, real-life applications, ranging from mobile to social media ap...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...