55 research outputs found
Fundamental structures of dynamic social networks
Social systems are in a constant state of flux with dynamics spanning from
minute-by-minute changes to patterns present on the timescale of years.
Accurate models of social dynamics are important for understanding spreading of
influence or diseases, formation of friendships, and the productivity of teams.
While there has been much progress on understanding complex networks over the
past decade, little is known about the regularities governing the
micro-dynamics of social networks. Here we explore the dynamic social network
of a densely-connected population of approximately 1000 individuals and their
interactions in the network of real-world person-to-person proximity measured
via Bluetooth, as well as their telecommunication networks, online social media
contacts, geo-location, and demographic data. These high-resolution data allow
us to observe social groups directly, rendering community detection
unnecessary. Starting from 5-minute time slices we uncover dynamic social
structures expressed on multiple timescales. On the hourly timescale, we find
that gatherings are fluid, with members coming and going, but organized via a
stable core of individuals. Each core represents a social context. Cores
exhibit a pattern of recurring meetings across weeks and months, each with
varying degrees of regularity. Taken together, these findings provide a
powerful simplification of the social network, where cores represent
fundamental structures expressed with strong temporal and spatial regularity.
Using this framework, we explore the complex interplay between social and
geospatial behavior, documenting how the formation of cores are preceded by
coordination behavior in the communication networks, and demonstrating that
social behavior can be predicted with high precision.Comment: Main Manuscript: 16 pages, 4 figures. Supplementary Information: 39
pages, 34 figure
The Strength of Friendship Ties in Proximity Sensor Data
Understanding how people interact and socialize is important in many contexts
from disease control to urban planning. Datasets that capture this specific
aspect of human life have increased in size and availability over the last few
years. We have yet to understand, however, to what extent such electronic
datasets may serve as a valid proxy for real life social interactions. For an
observational dataset, gathered using mobile phones, we analyze the problem of
identifying transient and non-important links, as well as how to highlight
important social interactions. Applying the Bluetooth signal strength parameter
to distinguish between observations, we demonstrate that weak links, compared
to strong links, have a lower probability of being observed at later times,
while such links--on average--also have lower link-weights and probability of
sharing an online friendship. Further, the role of link-strength is
investigated in relation to social network properties.Comment: Updated Introduction, added references. 12 pages, 7 figure
Temporal and cultural limits of privacy in smartphone app usage
Large-scale collection of human behavioral data by companies raises serious
privacy concerns. We show that behavior captured in the form of application
usage data collected from smartphones is highly unique even in very large
datasets encompassing millions of individuals. This makes behavior-based
re-identification of users across datasets possible. We study 12 months of data
from 3.5 million users and show that four apps are enough to uniquely
re-identify 91.2% of users using a simple strategy based on public information.
Furthermore, we show that there is seasonal variability in uniqueness and that
application usage fingerprints drift over time at an average constant rate
SensibleSleep: A Bayesian Model for Learning Sleep Patterns from Smartphone Events
We propose a Bayesian model for extracting sleep patterns from smartphone
events. Our method is able to identify individuals' daily sleep periods and
their evolution over time, and provides an estimation of the probability of
sleep and wake transitions. The model is fitted to more than 400 participants
from two different datasets, and we verify the results against ground truth
from dedicated armband sleep trackers. We show that the model is able to
produce reliable sleep estimates with an accuracy of 0.89, both at the
individual and at the collective level. Moreover the Bayesian model is able to
quantify uncertainty and encode prior knowledge about sleep patterns. Compared
with existing smartphone-based systems, our method requires only screen on/off
events, and is therefore much less intrusive in terms of privacy and more
battery-efficient
Measuring Large-Scale Social Networks with High Resolution
This paper describes the deployment of a large-scale study designed to measure human interactions across a variety of communication channels, with high temporal resolution and spanning multiple years-the Copenhagen Networks Study. Specifically, we collect data on face-to-face interactions, telecommunication, social networks, location, and background information (personality, demographics, health, politics) for a densely connected population of 1 000 individuals, using state-of-the-art smartphones as social sensors. Here we provide an overview of the related work and describe the motivation and research agenda driving the study. Additionally, the paper details the data-types measured, and the technical infrastructure in terms of both backend and phone software, as well as an outline of the deployment procedures. We document the participant privacy procedures and their underlying principles. The paper is concluded with early results from data analysis, illustrating the importance of multi-channel high-resolution approach to data collection
The chaperone effect in scientific publishing.
Experience plays a critical role in crafting high-impact scientific work. This is particularly evident in top multidisciplinary journals, where a scientist is unlikely to appear as senior author if he or she has not previously published within the same journal. Here, we develop a quantitative understanding of author order by quantifying this "chaperone effect," capturing how scientists transition into senior status within a particular publication venue. We illustrate that the chaperone effect has a different magnitude for journals in different branches of science, being more pronounced in medical and biological sciences and weaker in natural sciences. Finally, we show that in the case of high-impact venues, the chaperone effect has significant implications, specifically resulting in a higher average impact relative to papers authored by new principal investigators (PIs). Our findings shed light on the role played by experience in publishing within specific scientific journals, on the paths toward acquiring the necessary experience and expertise, and on the skills required to publish in prestigious venues.This work was supported by Air Force
Office of Scientific Research grants FA9550-15-1-0077 and FA9550-
15-1-0364 (A.-L.B. and R.S.), The European Commission, H2020
Framework program, Grant 641191 CIMPLEX, The Templeton
Foundation (R.S., A.-L.B.), and the ITI project ‘Just Data’ funded
by Central European University (R.S.), The Villum Foundation
(S.L.), The Independent Research Fund Denmark (S.L.). R.S. thanks
Michael Szell for useful discussions and feedback, and Alex Gates
for support with the Web of Science data
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