Abstract

The emerging technologies of wearable wireless devices open entirely new ways to record various aspects of human social interactions in a broad range of settings. Such technologies allow to log the temporal dynamics of face-to-face interactions by detecting the physical proximity of participants. However, despite the wide usage of this technology and the collected datasets, precise reconstruction methods transforming the raw recorded communication data packets to social interactions are still missing.In this study we analyse a proximity dataset collected during a longitudinal social experiment aiming to understand the co-evolution of children’s language development and social network. Physical proximity and verbal communication of hundreds of pre-school children and their teachers are recorded over three years using autonomous wearable low power wireless devices. The dataset is accompanied with three annotated ground truth datasets, which record the time, distance, relative orientation, and interaction state of interacting children for validation purposes.We use this dataset to explore several pipelines of dynamical event reconstruction including earlier applied naïve approaches, methods based on Hidden Markov Model, or on Long Short-Term Memory models, some of them combined with supervised pre-classification of interaction packets. We find that while naïve models propose the worst reconstruction, Long Short-Term Memory models provide the most precise way to reconstruct real interactions up to {sim} 90% accuracy. Finally, we simulate information spreading on the reconstructed networks obtained by the different methods. Results indicate that small improvement of network reconstruction accuracy may lead to significantly different spreading dynamics, while sometimes large differences in accuracy have no obvious effects on the dynamics. This not only demonstrates the importance of precise network reconstruction but also the careful choice of the reconstruction method in relation with the data collected. Missing this initial step in any study may seriously mislead conclusions made about the emerging properties of the observed network or any dynamical process simulated on it.

Highlights

  • The precise observation of the dynamics of face-to-face interactions of people have been a major challenge in social studies [1]

  • These experiments highlighted novel behavioural patterns [11, 12] and their consequences on ongoing dynamical processes like epidemic spreading [13,14,15,16] or the adoption of different behavioural forms [12]. All these studies have some methodological similarities. They have been implemented in rather different ways using centralised radio-frequency identification (RFID) [11, 16,17,18,19,20,21] or autonomous LPWD [8, 22, 23] technologies, they all provide the same output as sequences of radio signals pairs

  • In this paper, starting from the recorded raw communication data, we explore multiple temporal network reconstruction methods to find the best way to rebuild the original sequence of interactions

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Summary

Introduction

The precise observation of the dynamics of face-to-face interactions of people have been a major challenge in social studies [1]. Online experimental settings, crowd-sourcing services, and new behavioural tracking technologies provided by Internet-of-Things (IoT) solutions like RFIDs [17], IoT-LPWD [8, 22, 23], in addition to reality mining/personal logs [29, 30], real-time surveillance [31], or smart/GPS enabled devices [32, 33] provide the opportunity to precisely observe the behaviour of a selected group of people in more controlled settings These new opportunities open new challenges as the recorded raw data do not translate to knowledge.

Experimental setting and data collection
Discussion
Findings
Hidden Markov model

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