Mining Exceptional Social Behaviour

Conference Paper (2019)
Author(s)

C. Centeio Jorge (University of Twente, Universidade do Porto)

Martin Atzmueller (Tilburg University)

Behzad M. Heravi (University College London)

Jenny L. Gibson (University of Cambridge)

Cláudio Rebelo de Sá (University of Twente)

Rosaldo J.F. Rossetti (Universidade do Porto)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1007/978-3-030-30244-3_38
More Info
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Publication Year
2019
Language
English
Affiliation
External organisation
Pages (from-to)
460-472
ISBN (print)
9783030302436

Abstract

Essentially, our lives are made of social interactions. These can be recorded through personal gadgets as well as sensors adequately attached to people for research purposes. In particular, such sensors may record real time location of people. This location data can then be used to infer interactions, which may be translated into behavioural patterns. In this paper, we focus on the automatic discovery of exceptional social behaviour from spatio-temporal data. For that, we propose a method for Exceptional Behaviour Discovery (EBD). The proposed method combines Subgroup Discovery and Network Science techniques for finding social behaviour that deviates from the norm. In particular, it transforms movement and demographic data into attributed social interaction networks, and returns descriptive subgroups. We applied the proposed method on two real datasets containing location data from children playing in the school playground. Our results indicate that this is a valid approach which is able to obtain meaningful knowledge from the data.

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