Publication Date:
2017
abstract:
On line social networks (e.g., Facebook, Twitter)
allow users to tag their posts with geographical coordinates
collected through the GPS interface of smart phones. The
time- and geo-coordinates associated with a sequence of tweets
manifest the spatial-temporal movements of people in real
life. This paper aims to analyze such movements to predict
the next location of an individual based on the observations
of his mobility behavior over some period of time and the
recent locations that he has visited. To this end, we defined
a prediction methodology based on a set of spatio-temporal
features characterizing locations and movements among them.
We then combined the features in a supervised learning
approach based on M5 model trees. The experimental results
obtained by using a real-world dataset show that the supervised
method is effective in predicting the users next places achieving
a remarkable accuracy.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Twitter; Next-place prediction; Trajectory
List of contributors: