A survey on deep learning for human mobility
The study of human mobility is crucial due to its impact on several aspects of our society,
such as disease spreading, urban planning, well-being, pollution, and more. The …
such as disease spreading, urban planning, well-being, pollution, and more. The …
A survey on trajectory data management, analytics, and learning
Recent advances in sensor and mobile devices have enabled an unprecedented increase
in the availability and collection of urban trajectory data, thus increasing the demand for …
in the availability and collection of urban trajectory data, thus increasing the demand for …
Deepmove: Predicting human mobility with attentional recurrent networks
Human mobility prediction is of great importance for a wide spectrum of location-based
applications. However, predicting mobility is not trivial because of three challenges: 1) the …
applications. However, predicting mobility is not trivial because of three challenges: 1) the …
A survey on trajectory data mining: Techniques and applications
Rapid advance of location acquisition technologies boosts the generation of trajectory data,
which track the traces of moving objects. A trajectory is typically represented by a sequence …
which track the traces of moving objects. A trajectory is typically represented by a sequence …
Serm: A recurrent model for next location prediction in semantic trajectories
Predicting the next location a user tends to visit is an important task for applications like
location-based advertising, traffic planning, and tour recommendation. We consider the next …
location-based advertising, traffic planning, and tour recommendation. We consider the next …
Trajectory clustering via deep representation learning
Trajectory clustering, which aims at discovering groups of similar trajectories, has long been
considered as a corner stone task for revealing movement patterns as well as facilitating …
considered as a corner stone task for revealing movement patterns as well as facilitating …
Gmove: Group-level mobility modeling using geo-tagged social media
Understanding human mobility is of great importance to various applications, such as urban
planning, traffic scheduling, and location prediction. While there has been fruitful research …
planning, traffic scheduling, and location prediction. While there has been fruitful research …
Regions, periods, activities: Uncovering urban dynamics via cross-modal representation learning
With the ever-increasing urbanization process, systematically modeling people's activities in
the urban space is being recognized as a crucial socioeconomic task. This task was nearly …
the urban space is being recognized as a crucial socioeconomic task. This task was nearly …
Predicting human mobility via graph convolutional dual-attentive networks
Human mobility prediction is of great importance for various applications such as smart
transportation and personalized recommender systems. Although many traditional pattern …
transportation and personalized recommender systems. Although many traditional pattern …
Context-aware deep model for joint mobility and time prediction
Mobility prediction, which is to predict where a user will arrive based on the user's historical
mobility records, has attracted much attention. We argue that it is more useful to know not …
mobility records, has attracted much attention. We argue that it is more useful to know not …