From seconds to months: multi-scale dynamics of mobile telephone calls
April 07, 2015 Β· Declared Dead Β· π European Physical Journal B : Condensed Matter Physics
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Authors
Jari Saramaki, Esteban Moro
arXiv ID
1504.01479
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
109
Venue
European Physical Journal B : Condensed Matter Physics
Last Checked
4 months ago
Abstract
Big Data on electronic records of social interactions allow approaching human behaviour and sociality from a quantitative point of view with unforeseen statistical power. Mobile telephone Call Detail Records (CDRs), automatically collected by telecom operators for billing purposes, have proven especially fruitful for understanding one-to-one communication patterns as well as the dynamics of social networks that are reflected in such patterns. We present an overview of empirical results on the multi-scale dynamics of social dynamics and networks inferred from mobile telephone calls. We begin with the shortest timescales and fastest dynamics, such as burstiness of call sequences between individuals, and "zoom out" towards longer temporal and larger structural scales, from temporal motifs formed by correlated calls between multiple individuals to long-term dynamics of social groups. We conclude this overview with a future outlook.
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