Volume 37, Issue 6 e12627
SPECIAL ISSUE PAPER

From mobility data to habits and common pathways

Thiago Andrade

Corresponding Author

Thiago Andrade

INESC TEC, Porto, Portugal

University of Porto, Porto, Portugal

Correspondence

Thiago Andrade, LIAAD, INESC TEC, Rua Dr. Roberto Frias 4200-465, Porto, Portugal.

Email: [email protected]

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Brais Cancela

Brais Cancela

INESC TEC, Porto, Portugal

Universidade da Coruña, A Coruña, Spain

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João Gama

João Gama

INESC TEC, Porto, Portugal

University of Porto, Porto, Portugal

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First published: 02 September 2020
Citations: 10

Abstract

Many aspects of our lives are associated with places and the activities we perform on a daily basis. Most of them are recurrent and demand displacement of the individual between regular places like going to work, school or other important personal locations. To accomplish these recurrent daily activities, people tend to follow regular paths with similar temporal and spatial characteristics, especially because humans are frequently looking for uniformity to support their decisions and make their actions easier or even automatic. In this work, we propose a method for discovering common pathways across users' habits from human mobility data. By using a density-based clustering algorithm, we identify the most preferable locations the users visit, we apply a Gaussian mixture model over these places to automatically separate among all traces, the trajectories that follow patterns in order to discover the representations of individual's habits. By using the longest common sub-sequence algorithm, we search for the trajectories that are more similar over the set of users' habits trips by considering the distance that pairs of users or habits share on the same path. The proposed method is evaluated over two real-world GPS datasets and the results show that the approach is able to detect the most important places in a user's life, detect the routine activities and identify common routes between users that have similar habits paving the way for research techniques in carpooling, recommendation and prediction systems.

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