Robust modeling of human contact networks across different scales and proximity-sensing techniques
July 20, 2017 Β· Declared Dead Β· π Social Informatics
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Authors
Michele Starnini, Bruno Lepri, Andrea Baronchelli, Alain Barrat, Ciro Cattuto, Romualdo Pastor-Satorras
arXiv ID
1707.06632
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
24
Venue
Social Informatics
Last Checked
3 months ago
Abstract
The problem of mapping human close-range proximity networks has been tackled using a variety of technical approaches. Wearable electronic devices, in particular, have proven to be particularly successful in a variety of settings relevant for research in social science, complex networks and infectious diseases dynamics. Each device and technology used for proximity sensing (e.g., RFIDs, Bluetooth, low-power radio or infrared communication, etc.) comes with specific biases on the close-range relations it records. Hence it is important to assess which statistical features of the empirical proximity networks are robust across different measurement techniques, and which modeling frameworks generalize well across empirical data. Here we compare time-resolved proximity networks recorded in different experimental settings and show that some important statistical features are robust across all settings considered. The observed universality calls for a simplified modeling approach. We show that one such simple model is indeed able to reproduce the main statistical distributions characterizing the empirical temporal networks.
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