TY - JOUR
T1 - Understanding the complexities of Bluetooth for representing real-life social networks
T2 - A methodology for inferring and validating Bluetooth-based social network graphs
AU - Simoski, Bojan
AU - Klein, Michel C.A.
AU - Araújo, Eric Fernandes de Mello
AU - van Halteren, Aart T.
AU - van Woudenberg, Thabo J.
AU - Bevelander, Kirsten E.
AU - Buijzen, Moniek
AU - Bal, Henri
N1 - Publisher Copyright:
© The Author(s) 2020.
PY - 2024/2
Y1 - 2024/2
N2 - Bluetooth (BT) data has been extensively used for recognizing social patterns and inferring social networks, as BT is widely present in everyday technological devices. However, even though collecting BT data is subject to random noise and may result in substantial measurement errors, there is an absence of rigorous procedures for validating the quality of the inferred BT social networks. This paper presents a methodology for inferring and validating BT-based social networks based on parameter optimization algorithm and social network analysis (SNA). The algorithm performs edge inference in a brute-force search over a given BT data set, for deriving optimal BT social networks by validating them with predefined ground truth (GT) networks. The algorithm seeks to optimize a set of parameters, predefined considering some reliability challenges associated to the BT technology itself. The outcomes show that optimizing the parameters can reduce the number of BT data false positives or generate BT networks with the minimum amount of BT data observations. The subsequent SNA shows that the inferred BT social networks are unable to reproduce some network characteristics present in the corresponding GT networks. Finally, the generalizability of the proposed methodology is demonstrated by applying the algorithm on external BT data sets, while obtaining comparable results.
AB - Bluetooth (BT) data has been extensively used for recognizing social patterns and inferring social networks, as BT is widely present in everyday technological devices. However, even though collecting BT data is subject to random noise and may result in substantial measurement errors, there is an absence of rigorous procedures for validating the quality of the inferred BT social networks. This paper presents a methodology for inferring and validating BT-based social networks based on parameter optimization algorithm and social network analysis (SNA). The algorithm performs edge inference in a brute-force search over a given BT data set, for deriving optimal BT social networks by validating them with predefined ground truth (GT) networks. The algorithm seeks to optimize a set of parameters, predefined considering some reliability challenges associated to the BT technology itself. The outcomes show that optimizing the parameters can reduce the number of BT data false positives or generate BT networks with the minimum amount of BT data observations. The subsequent SNA shows that the inferred BT social networks are unable to reproduce some network characteristics present in the corresponding GT networks. Finally, the generalizability of the proposed methodology is demonstrated by applying the algorithm on external BT data sets, while obtaining comparable results.
KW - Algorithms
KW - Bluetooth
KW - Social networks
KW - Ubiquitous computing
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U2 - 10.1007/s00779-020-01435-x
DO - 10.1007/s00779-020-01435-x
M3 - Article
AN - SCOPUS:85089375027
SN - 1617-4909
VL - 28
SP - 343
EP - 362
JO - Personal and Ubiquitous Computing
JF - Personal and Ubiquitous Computing
IS - 1
ER -