Publication Date:
2019
abstract:
Analysis of people trajectories is key for implementing
effective urban computing applications. Nowadays,
social media represent one of the main sources of information
concerning human dynamics within urban context, allowing
to enhance the comprehension of people behaviour, including
human mobility regularities. The paper presents an approach
to predict human mobility by exploiting Twitter data. The
prediction method is based on a hybrid approach combining
frequent pattern mining, trajectory similarity and supervised
classification. The trajectory pattern similarity allows to identify
the more suitable historic patterns to exploit for the
prediction of the user next location. If none of the patterns
satisfies the similarity threshold, a set of spatio-temporal
features characterizing locations and movements among them
are combined into a supervised learning approach based on
M5 model trees. The experimental results obtained by using a
real-world dataset show that the proposed method is effective
in predicting the user's next places achieving a remarkable
accuracy and prediction rate.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Urban Computing; Trajectory Patterns; Human Mobility; Next-place Prediction
List of contributors: