Loading...
Thumbnail Image
Publication

Extracting and modeling commuting networks from social media communication

Duarte Dantas Lisbôa Mota, Oscar Thyago José
Citations
Altmetric:
Editor
Date
Date Issued
2016
Date Submitted
Keywords
Research Projects
Organizational Units
Journal Issue
Embargo Expires
Abstract
Commuting networks describe the flows of individuals from one location to another. These networks are present in many different application scenarios, including traffic modeling, infrastructure planning, and epidemic simulation. Traditionally, commuting networks are created using data from costly and outdated surveys. This dissertation shows how individual's location information can be data mined from social media communication and be used to build commuting networks. Some of the problems discussed in this dissertation include the quality aspects of location information obtained from social media and the lack of representation of social media users in the overall general population. Two models for commuting networks, the gravity model and the radiation model, are described and evaluated. This dissertation also presents GeoDigger, a tool that can be used to help researchers collect location information from Twitter, one of the most popular online social networks. GeoDigger can exclude non-human social activity based on a machine learning technique adapted to work with imbalanced data.
Associated Publications
Rights
Copyright of the original work is retained by the author.
Embedded videos