https://doi.org/10.1140/epjds/s13688-015-0062-0
Regular article
Predicting links in ego-networks using temporal information
1
LIP6, UPMC University Paris 06, Sorbonne Universités, CNRS, UMR 7606, 4 Place Jussieu, Paris, 75005, France
2
naXys, University of Namur, Rempart de la Vierge 8, Namur, 5000, Belgium
* e-mail: lionel.tabourier@lip6.fr
Received:
30
September
2015
Accepted:
22
December
2015
Published online:
6
January
2016
Link prediction appears as a central problem of network science, as it calls for unfolding the mechanisms that govern the micro-dynamics of the network. In this work, we are interested in ego-networks, that is the mere information of interactions of a node to its neighbors, in the context of social relationships. As the structural information is very poor, we rely on another source of information to predict links among egos’ neighbors: the timing of interactions. We define several features to capture different kinds of temporal information and apply machine learning methods to combine these various features and improve the quality of the prediction. We demonstrate the efficiency of this temporal approach on a cellphone interaction dataset, pointing out features which prove themselves to perform well in this context, in particular the temporal profile of interactions and elapsed time between contacts.
Key words: link prediction / ego networks / social networks / learning-to-rank
© The Author(s), 2016