Discovering user's trends and routines from location based social networks

Abstract: ABSTRACT: Location data is a powerful source of information to discover user?s trends and routines. A suitable identification of the user context can be exploited to provide automatically services adapted to the user preferences. In this paper, we define a Dynamic Bayesian Network model and propose a method that processes location annotated data in order to train the model. Finally, our model enables us to predict future location contexts from the user patterns. A case study evaluates the proposal using real-world data of a location-based social network.

 Congreso: International Conference on Ubiquitous Computing and Ambient Intelligence: UCAmI (12º : 2018 : Punta Cana)

Editorial: MDPI

 Año de publicación: 2018

Nº de páginas: 8

Tipo de publicación: Comunicación a Congreso

DOI: 10.3390/proceedings2191222

ISSN: 2504-3900

Proyecto español: MTM2014-55262-P