322 research outputs found
Emergent user behavior on Twitter modelled by a stochastic differential equation
Data from the social-media site, Twitter, is used to study the fluctuations
in tweet rates of brand names. The tweet rates are the result of a strongly
correlated user behavior, which leads to bursty collective dynamics with a
characteristic 1/f noise. Here we use the aggregated "user interest" in a brand
name to model collective human dynamics by a stochastic differential equation
with multiplicative noise. The model is supported by a detailed analysis of the
tweet rate fluctuations and it reproduces both the exact bursty dynamics found
in the data and the 1/f noise
Correlations Between Human Mobility and Social Interaction Reveal General Activity Patterns
A day in the life of a person involves a broad range of activities which are
common across many people. Going beyond diurnal cycles, a central question is:
to what extent do individuals act according to patterns shared across an entire
population? Here we investigate the interplay between different activity types,
namely communication, motion, and physical proximity by analyzing data
collected from smartphones distributed among 638 individuals. We explore two
central questions: Which underlying principles govern the formation of the
activity patterns? Are the patterns specific to each individual or shared
across the entire population? We find that statistics of the entire population
allows us to successfully predict 71\% of the activity and 85\% of the
inactivity involved in communication, mobility, and physical proximity.
Surprisingly, individual level statistics only result in marginally better
predictions, indicating that a majority of activity patterns are shared across
{our sample population}. Finally, we predict short-term activity patterns using
a generalized linear model, which suggests that a simple linear description
might be sufficient to explain a wide range of actions, whether they be of
social or of physical character
Thermodynamic Formalism of the Harmonic Measure of Diffusion Limited Aggregates: Phase Transition and Converged
We study the nature of the phase transition in the multifractal formalism of
the harmonic measure of Diffusion Limited Aggregates (DLA). Contrary to
previous work that relied on random walk simulations or ad-hoc models to
estimate the low probability events of deep fjord penetration, we employ the
method of iterated conformal maps to obtain an accurate computation of the
probability of the rarest events. We resolve probabilities as small as
. We show that the generalized dimensions are infinite for
, where . In the language of this means
that is finite. We present a converged curve.Comment: accepted for Physical Review Letter
Measure of Node Similarity in Multilayer Networks
The weight of links in a network is often related to the similarity of the
nodes. Here, we introduce a simple tunable measure for analysing the similarity
of nodes across different link weights. In particular, we use the measure to
analyze homophily in a group of 659 freshman students at a large university.
Our analysis is based on data obtained using smartphones equipped with custom
data collection software, complemented by questionnaire-based data. The network
of social contacts is represented as a weighted multilayer network constructed
from different channels of telecommunication as well as data on face-to-face
contacts. We find that even strongly connected individuals are not more similar
with respect to basic personality traits than randomly chosen pairs of
individuals. In contrast, several socio-demographics variables have a
significant degree of similarity. We further observe that similarity might be
present in one layer of the multilayer network and simultaneously be absent in
the other layers. For a variable such as gender, our measure reveals a
transition from similarity between nodes connected with links of relatively low
weight to dis-similarity for the nodes connected by the strongest links. We
finally analyze the overlap between layers in the network for different levels
of acquaintanceships.Comment: 12 pages, 4 figure
Geothermal energy in Denmark
The Geological Survey of Denmark and Greenland (GEUS) has for many years been involved with research, advisory and consultancy services concerning the assessment of the geothermal energy potential in Denmark, in close cooperation with private and public partners. The Surveyâs particular responsibility has been the development of geological models to describe and predict the distribution of sandstone reservoirs suitable for geothermal exploitation. Danish geothermal resources in known sandstone aquifers are estimated to be sufficient to cover household heating requirements in Denmark for more than a century (Sørensen et al. 1998)
- âŚ